Description
The Economic Analysis Research Paper Series provides for the circulation of research conducted by the staff of National Accounts and Analytical Studies, visiting fellows, and academic associates.
Measuring the Economic Output
of the Education Sector
in the National Accounts
by Wulong Gu and Ambrose Wong
Economic Analysis Division
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Telephone: 1-800-263-1136
Catalogue no. 11F0027M — No. 080
ISSN 1703-0404
ISBN 978-1-100-21307-1
Resear ch Paper
Economic Analysis (EA) Research Paper Series
Measuring the Economic Output of the
Education Sector in the National Accounts
by
Wulong Gu and Ambrose Wong
11F0027M No. 080
ISSN 1703-0404
ISBN 978-1-100-21307-1
Statistics Canada
Analysis Branch
Economic Analysis Division
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October 2012
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11F0027M au catalogue, n
o
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Acknowledgement
The authors thank Isabelle Amano, Dan Boothby, John Baldwin, Winnie Chan, Gang Liu,
Fabiola Riccardini, and Paul Schreyer for their helpful comments. The authors are grateful to the
members of the National Accounts Advisory Committee of Statistics Canada as well as to the
participants in the 2010 Canadian Economics Association annual meeting and the participants
in the 2010 International Association for Research in Income and Wealth conference for their
feedback. They would also like to thank Karim Moussaly for putting together data on the number
of publications from the Canadian Bibliometric Database that is used a measure of research
output of the Canadian universities.
Economic Analysis Research Paper Series - 5 - Statistics Canada – Catalogue no.11F0027M, no. 080
Table of contents
Abstract ..................................................................................................................................... 6
Executive summary .................................................................................................................. 7
1 Introduction ......................................................................................................................... 9
2 Measuring the output of the education sector ................................................................ 10
2.1 Income-based approach to the measurement of education services ........................... 11
2.2 Cost-based approach to the measurement of education services ............................... 12
2.3 Data ............................................................................................................................ 13
2.4 Estimates of the output of the education sector ........................................................... 16
2.5 Comparison with the System of National Accounts ..................................................... 27
3 Accounting for quality changes in education services .................................................. 30
3.1 Education quality, test scores ...................................................................................... 31
3.2 Hedonic regression ..................................................................................................... 34
3.3 Quality-adjusted price and volume indices of education output ................................... 36
4 Conclusion ........................................................................................................................ 37
References .............................................................................................................................. 38
Economic Analysis Research Paper Series - 6 - Statistics Canada – Catalogue no.11F0027M, no. 080
Abstract
This research paper constructs two experimental measures of the economic output of the
education sector for Canada: an income-based measure and a cost-based measure. The
measures differ from the existing measure currently used in the National Accounts, which is
based on the volume of total input, and can be used to examine the productivity performance of
the education sector. Both approaches are predicated on the notion that the output of the
education sector represents investment in human capital. The income-based approach
measures investment in education as increments in the future stream of earnings arising from
education. The cost-based approach measures investment as total expenditures related to
education. The paper finds that the two approaches yield similar estimates of the growth in real
education output, but produce very different estimates of the level of education output. The
paper also proposes and implements a hedonic approach in order to capture the quality of the
output of the education sector.
More studies related to National Economic Accounts and macro-economy and productivity
are available in Update on Economic analysis.
Economic Analysis Research Paper Series - 7 - Statistics Canada – Catalogue no.11F0027M, no. 080
Executive summary
Education is an important economic activity in Canada. However, little is known about the
productivity performance of the education sector, as the output of the education sector has been
measured largely by inputs in Canada.
In the System of National Accounts of Canada and those of most other countries, the volume of
output of the education sector has been measured in the past by the volume of inputs, where
total inputs include labour costs for teachers and administrative staff, capital input, and
intermediate inputs. Since the volume of output is measured by the volume of inputs, the ratio of
output to inputs does not measure productivity performance for that sector. The objective of this
paper is to develop experimental measures of the output of the education sector for Canada that
can be used to examine the productivity performance of this sector, based on the ongoing
development of output-based measure in other Organization for Economic Cooperation and
Development (OECD) countries (Schreyer 2009b, Fraumeni et al. 2008).
This research paper focuses on four questions.
1. What are the approaches used by national statistical agencies to measure the economic
output of the education sector?
The approaches used by national statistical agencies to measure the economic output of the
education sector can be classified into two groups . The first is the income-based approach, or
human capital approach, developed in a series of papers by Jorgenson and Fraumeni (1989,
1992, 1996). The second approach is the cost-based approach, which can be traced back to the
estimates of investment in education based on expenditures that was developed by Kendrick
(1976).
Both approaches start with the number of student enrolments or the number of graduates,
disaggregated by education level, type of education program, age, and gender, as the quantity
measure of education output. The two approaches differ in the weights assigned to, or the unit
prices used to weigh, the different types of enrolments or graduates in order to derive a volume
index of education output.
For the income-based approach, the volume index of education output is calculated as a
weighted sum of student enrolments using weights based on the value of education. The other
is measured by its effect on students’ lifetime labour incomes. The value of education,
measured in terms of its effect on lifetime income, is calculated as the difference between the
lifetime income of an individual enrolled in that education level and the lifetime income of an
individual with a lower education level. For the cost-based approach, the volume index of
education output is calculated as a weighted sum of student enrolments using weights based on
total expenditures per student as the unit price of education. Total expenditures include teacher
salaries, intermediate inputs, and a capital consumption allowance.
2. What are the estimated growth rates of the output of the Canadian education sector that are
derived from the two approaches?
The income-based approach and the cost-based approach are used to estimate the output of
the education sector, which includes primary and secondary education, colleges, and
universities.
The income-based measure of education output is estimated to have increased by 0.8% per
year over the period from 1976 to 2005, while the cost-based estimate increased by 0.6%
during the same period. The difference in the rate of growth between the two estimates can be
attributed to the differences in the level of aggregation for enrolments and the weights used to
Economic Analysis Research Paper Series - 8 - Statistics Canada – Catalogue no.11F0027M, no. 080
aggregate enrolments between the two approaches. For the income-based approach,
enrolments are disaggregated by gender, education level (one of five levels), and age (age 6 to
74). The five education levels are defined as: 0?8 years of schooling; some or completed high
school; some or completed postsecondary school below bachelor’s degree; bachelor’s degree;
and master’s degree or above. For the cost-based approach, enrolments are disaggregated by
three education levels (primary and secondary, college, and university). This disaggregation is
determined by the availability of data on education expenditures.
3. What are the estimates of the nominal value of the output of the Canadian education sector
from the two approaches?
The nominal value of education output from the income-based approach is set equal to the
value of education as measured by its effect on students’ lifetime income. The nominal value of
education output from the cost-based approach is derived from total education expenditures,
which include the labour costs of teachers and administrative staff, capital costs, and
intermediate inputs.
The income-based estimate of the nominal value of education services is found to be much
higher than the cost-based estimate. In 2005, the income-based measure was estimated at
about 6.8 times as large as the cost-based estimate.
There are a number of potential explanations for this difference. First, the coverage of the
education sector differs between the two approaches. The education services sector in the
income-based approach includes the inputs of non-market activities (the opportunity cost of
students’ time), while the cost-based approach does not. Second, the income-based approach
attributes the earnings differentials among individuals to the effect of investment in formal
education (Rosen 1989). To the extent that the earning differential also captures the effect of
on-the-job training, gender discrimination, and individuals’ ability, the income-based approach
overestimates the level of education output.
Despite these differences, the two estimates generate quite similar rates of growth of real or
volume measures.
4. What are the main challenges for measuring the output and the productivity performance of
the education sector?
The measures of the output of the education sector developed in this paper represent an
important first step towards understanding the productivity performance of the education sector.
However, significant challenges remain. Chief among them are the changes in education quality
that must be taken into account in order to accurately estimate the productivity performance of
the education sector. While the hedonic method can be applied in order to take into account the
quality changes in education output as shown in the paper, the data for implementing quality
adjustments are often not available or incomplete. The challenge facing statistical agencies is to
collect time-consistent data on the various indicators of education quality (such as class size,
test scores, and teacher quality) and to conduct surveys that can be used to estimate hedonic
regressions that link the indicators of education quality to the unit price of education output in
terms of the value of education or expenditures of education.
Economic Analysis Research Paper Series - 9 - Statistics Canada – Catalogue no.11F0027M, no. 080
1 Introduction
Education is an important economic activity in Canada. Education, at 15% of consolidated
government expenditures, was the third-largest item, following health (19%) and social services
(30%), in 2009 (Statistics Canada, CANSIM table 385-0001). However, little is known about the
productivity performance of the education sector, as the output of the education sector has been
measured largely by inputs in Canada.
In the National Accounts of Canada and those of most other countries, the volume of output of
the education sector has been measured in the past by the volume of inputs in the education
sector, where total inputs include labour costs for teachers and administrative staff, capital input,
and intermediate inputs. Since the volume of output is measured by the volume of inputs in the
education sector, the ratio of output to inputs does not accurately measure productivity
performance for that sector. The objective of this paper is to develop experimental measures of
the output of the education sector for Canada that can be used to examine productivity
performance in the education sector.
In the last decade, several statistical agencies of countries belonging to the Organization for
Economic Cooperation and Development (OECD) have carried out research to develop output-
based measures of education services and of other non-market service sectors, such as health
services. The research has led to the development of improved methods for the measurement
of education services. By 2006, nine OECD countries had implemented output-based measures
of education services: Australia, Finland, France, Germany, Italy, the Netherlands, New
Zealand, Spain, and the United Kingdom. A number of other OECD countries are expected to
implement the output-based measures for education output (Schreyer 2009b). More recently,
the U.S. Bureau of Economic Analysis has developed experimental output-based measures for
the U.S. primary- and secondary-education sectors (Fraumeni et al. 2008).
Schreyer (2009b) and Fraumeni et al. (2008) define the output of the education sector as the
effect of education on the level of knowledge, skills, and competencies of students. This is also
referred to as investment in human capital (OECD 2010). This characterization of educational
output as investment in human capital dates back to Becker (1964), Mincer (1974), and Schultz
(1961), and is further developed and implemented in a series of papers by Jorgenson and
Fraumeni (1989, 1992, 1996).
According to this definition of education output, the task of measuring education services is
essentially one of measuring investment in human capital. The empirical literature has
developed two competing approaches to measuring the value of investments in human capital.
The first is the income-based approach, or human capital approach, developed in a series of
papers by Jorgenson and Fraumeni (1989, 1992, 1996). The second approach is the cost-
based approach, which can be traced back to the estimates of investment in education based
on expenditures (Kendrick 1976).
Both approaches start with the number of student enrolments or the number of graduates,
disaggregated by education level, type of education program, age, and gender. These are used
to measure the quantity of education output. The two approaches differ in the weights assigned
to, or the unit prices used to weigh, the different types of enrolments or graduates in order to
derive a volume index of education output.
For the income-based approach, the volume index of education output is calculated as a
weighted sum of student enrolments. Weights are based on the value of education which is
measured in terms of its effect on students’ lifetime labour incomes. The value of education in
terms of its effect on lifetime income is calculated as the difference between the lifetime income
of an individual enrolled in that education level and the lifetime income of an individual with a
lower education level. For the cost-based approach, the volume index of education output is
Economic Analysis Research Paper Series - 10 - Statistics Canada – Catalogue no.11F0027M, no. 080
calculated as a weighted sum of student enrolments using weights based on total expenditures
per student. Total expenditures include teacher salaries, intermediate inputs, and a capital
consumption allowance.
The two approaches also produce estimates of the nominal value of education output. The
nominal value of education output that is associated with the income-based approach is set
equal to the value of education measured in terms of its effect on students’ lifetime income. The
nominal value of education output used in the cost-based approach is set equal to total
education expenditures, which include labour costs for teachers and administrative staff, capital
costs, and intermediate inputs. The income-based estimate of the nominal value of education
services is higher than the cost-based estimate. The difference in the nominal value of
education output reflects the difference in the coverage of the education sector in the two
approaches. The education services sector in the income-based approach includes the inputs of
non-market activities (the opportunity cost of students’ time), while the cost-based approach
does not. The difference in the two estimates may be also due to the fact that the income-based
approach attributes all earning differentials to the effect of formal education. Abraham (2010)
provides a comprehensive discussion of the sources of the differences in the estimates of
human capital investment and education output found in the two approaches.
A major challenge with respect to the measurement of education services is to capture changes
in the quality of the education that students receive. There have been numerous attempts to
take into account quality changes in the measure of education output (see Schreyer 2009a and
Abraham 2010 for a review). A contribution of this paper is to recognize that quality adjustment
for education services is similar to the quality adjustment that has been made for the output of
computer technology and other information and communications technologies (ICT) products,
which have benefited from improvements in their quality over time. This paper then proceeds to
present and apply the hedonic technique that has been used elsewhere (i.e., for quality
adjustment to ICT products) in order to adjust the output of the education sector for changes in
quality.
The paper will focus on the education function of the education sector, which includes primary
and secondary education, colleges, and universities. The research output of universities is
estimated by the number of publications. It is then aggregated with university enrolments using
the relative cost shares of teaching vs. research to form the cost-based estimate of university
output. Education also yields benefits beyond increased future streams of earnings for
students, such as making students ‘better’ citizens and ‘better’ parents. However, those benefits
are excluded from the measure of education output in this paper, which focuses on the
economic output.
The rest of the paper is organized as follows. Section 2 presents the cost-based and income-
based estimates of education services for Canada. Section 3 presents estimates of quality-
adjusted education output. Section 4 concludes the paper.
2 Measuring the output of the education sector
This section presents two approaches for measuring the economic output of the education
sector. One, the income-based approach, is based on the future stream of earnings that
education can be expected to provide; the other, the cost-based approach, is based on the
costs of education. The two approaches are described below, in subsections 2.1 and 2.2, and
are used to produce estimates of the output of the Canadian education sector, in subsection
2.4.
Economic Analysis Research Paper Series - 11 - Statistics Canada – Catalogue no.11F0027M, no. 080
2.1 Income-based approach to the measurement of education
services
The income-based approach, or human capital approach, to the measurement of education
services is developed in a series of papers by Jorgenson and Fraumeni (1989, 1992, 1996).
The approach measures the value of education services as the effect of education on an
individual’s lifetime income. As the value of education depends on the student’s age, sex, and
education level, the approach disaggregates students by their age, sex, and education level.
Gu and Wong (2010) estimated the present discounted value of market lifetime labour income
(or the value of human capital) for all individuals aged 15 to 74 in Canada, following the
methodology developed by Jorgenson and Fraumeni (1989, 1992, 1996).
1
In the study, the
estimate is derived by using cross-sectional data. It is assumed that expected incomes in future
periods are equal to the incomes of individuals of the same gender and education, according to
the age that the individuals will have in the future time period, adjusted for increases in real
income. The lifetime incomes can be calculated by a backward recursion, starting with age 74,
which is assumed to be the oldest age before retirement. The expected income for a person of a
given age is that person’s current labour income plus his or her expected lifetime income in the
next period multiplied by survival probabilities. For example, the present value of lifetime income
of 74-year-olds is their current labour income. The lifetime income of 73-year-olds is equal to
their current labour income plus the present value of lifetime income of 74-year-olds, adjusted
for increases in real income.
Let
, ,
t
s e a
h denote the discounted lifetime income (or human capital stock) of individuals of sex s,
educational attainment e, and age a in year t, and
, ,
t
s e a
N denote the number of students of sex s,
and age a who are enrolled in education level e. It is assumed that individuals enroll in school in
order to attain a higher education level?that is, the individuals who are enrolled in education
level e have already achieved education level e-1.
The nominal value of education services (V) is estimated as increments in lifetime incomes
arising from increases in education summed over all students:
( )
, 1, , , , , , , , , ,
, , , ,
(1 ) / (1 ) .
t t m m t t t t
s e a m a a m s e a s e a s e a s e a
s e a s e a
V h g r sr h N I N
+ + +
(
= + + ÷ =
¸ ¸
¿ ¿
(1)
It is assumed that individuals with education level e-1 who are enrolled in school need to spend
an average of m additional years in school in order to achieve higher education level e. g is the
expected growth rate in real income, and r is the discount rate used to calculate the present
value of future lifetime labour income.
, a a m
sr
+
is the probability that an individual aged a will
survive for m more years.
, ,
t
s e a
I is the investment in human capital for a student, and
, ,
t
s e a
N is the
number of students.
The nominal value of education output in Equation (1) can be divided into volume and price
components (Diewert 1976). The volume index of education output (denoted by Q) is an index
number derived through a Tornqvist aggregation of school enrolments. It is calculated as a
weighted sum of student enrolments across different types of students by using as weights the
increment in lifetime labour incomes due to education:
1. Liu (2011) estimated the stock of human capital as the present discounted value of market lifetime income for
selected OECD countries.
Economic Analysis Research Paper Series - 12 - Statistics Canada – Catalogue no.11F0027M, no. 080
1 1
, , , , , ,
, ,
ln ln (ln ln ),
t t t t
s e a s e a s e a
s e a
Q Q v N N
÷ ÷
÷ = ÷
¿
(2)
where
1 1
, , , , , , , ,
, , 1 1
1/ 2 ,
t t t t
s e a s e a s e a s e a
s e a t t t t
I N I N
v
P Q P Q
÷ ÷
÷ ÷
| |
= +
|
|
\ .
v is the share of individuals with s, e, a in the total value of investment in education, averaged
over year t-1 and year t.
The price index of education services (P) is estimated by dividing the nominal value of
education services by the volume index of education services:
.
/
t t t
P V Q = (3)
The estimates of education output and prices in equations (1), (2), and (3) are based on the
number of pupils enrolled at different levels of education. Alternatively, the estimates of
education output can be based on the number of graduates who obtain a particular educational
qualification in a given year and leave the school system.
2
The output of the education sector
based on the number of graduates is estimated as the sum of lifetime incomes embodied in
those graduates. It can be shown that the estimates of education output based on the number of
enrolments are identical to those based on the number of graduates.
In practice, data on enrolments are readily available. In addition, estimates of the education
output for institutions of different levels of education, such as primary education, secondary
education, and postsecondary education, can be derived based on school enrolments. The
estimate based on graduates attaining a particular qualification reflects the sum of the
contribution of all education institutions leading to the qualification. For these reasons, data on
student enrolments are used to estimate education output.
A key assumption of the income-based approach is that the earning differentials among
individuals reflect the effect of investment in formal education (Rosen 1989). To the extent that
the earning differentials also capture the effect of on-the-job training, gender discrimination, and
individuals’ ability, the income-based approach overestimates the level of education output.
In some studies, the output of the education sector arrived at by means of the income-based
approach includes the effect of education on market income and on non-market income
(Jorgenson and Fraumeni 1992). This paper will focus on the output of the education sector as
measured by its effect only on market income. The methodologies for the measurement of non-
market income are less established, and data for such measurement are limited.
2.2 Cost-based approach to the measurement of education services
In contrast to the income-based approach, the cost-based approach measures the output of
education services by using the cost of inputs to education. The approach typically
disaggregates students by education level (elementary, secondary, or postsecondary), since
students enrolled in the various education levels require different amounts of those inputs. In
addition, as discussed by Fraumeni et al. (2008), it may be important to differentiate along the
lines of other student characteristics, such as regular education versus special education or
native English speakers versus non-native English speakers.
2. Fraumeni et al. (2008) provided a brief survey of methodologies used in a number of countries that are based on
either student enrolments or the number of graduates.
Economic Analysis Research Paper Series - 13 - Statistics Canada – Catalogue no.11F0027M, no. 080
The nominal value of education services V arrived at by using the cost-based approach is the
following:
,
t t t
i i
i
V C N =
¿
(4)
where:
t
i
N is the number of students enrolled in a specific education level (primary, secondary,
or postsecondary) or in a specific education program (regular education versus special
education); and
t
i
C is the costs of inputs per student.
Once again, the nominal value of education services can be divided into price and volume
components. The volume index of education services is a weighted sum of student enrolments
across different education levels using the share of the education levels in total input costs as
weights. The price index of education services is the ratio of the nominal value of education
services to the volume index.
A number of OECD countries have implemented this cost-based approach to the measurement
of education services.
3
Schreyer (2009b) recommended the use of the cost-based approach
over the income-based approach, since the cost-based approach is more consistent with the
existing national accounts framework. It maintains the existing boundary of the national
accounts while the income-based approach extends the boundary of national accounts to cover
household activities. Diewert (2008) showed that valuing output at average costs in measuring
output and productivity growth is a second-best option while the best option would be to use
final-demand prices to value output. The use of final-demand prices corresponds to the income-
based approach for the measurement of education output.
The nominal value of education services arrived at by using the income-based approach is
found to be much larger than the nominal value estimated by means of the cost-based approach
(Jorgenson and Fraumeni 1992). Abraham (2010) provided a number of possible explanations
for this difference. The discount rate used to calculate the present value of future lifetime
income may be too low. The costs of time spent by students in studying are not included in the
cost estimates. The earning differences between more educated and less educated individuals
may reflect a host of other factors, such as student ability, family background, and differences in
on-the-job training.
2.3 Data
The data required for estimating education output start with information on enrolment. In
addition, the income-based approach requires data on the impact of education on lifetime labour
income or data on investment in education, and the cost-based approach requires data on
education expenditures at different levels of education.
Data on student enrolments
The data on enrolment are taken from various surveys on student enrolments. From those
surveys, time series data are constructed on the number of pupils enrolled in school, cross-
classified by gender, education level (one of five levels), and age (age 6 to 74). The five
education levels are defined as follows: 0?8 years of schooling; some or completed high school;
some or completed postsecondary school below bachelor’s degree; bachelor’s degree; and
master’s degree or above. The data cover the period from 1972 to 2005. There appears to be a
break in enrolment data for education level 3 (some or completed postsecondary education
3. Fraumeni et al. (2008) and Schreyer (2009b) provided an extensive review of the approaches that a number of
countries have adopted for measuring education services.
Economic Analysis Research Paper Series - 14 - Statistics Canada – Catalogue no.11F0027M, no. 080
below bachelor’s degree) in 1976. The data for the period from 1976 to 2005 are used in this
paper.
The enrolment data for elementary and secondary education are obtained from the Elementary-
Secondary Education Statistics Project (ESESP) for the years after 1997. For 1997 and prior
years, the enrollment data are obtained from the Elementary/Secondary School Enrolment
(ESSE) survey.
The ESESP is an annual survey that collects aggregate data from each provincial/territorial
Ministry or Department of Education. Specifically, the information on enrolments pertains to the
following two streams: regular education; and minority- and second-language education.
Information on regular-education programs is collected by type of program (regular, upgrading,
or professional), education sector (youth or adult), grade, and sex. Information on minority- and
second-language programs is collected by type of program (immersion, as language of
instruction, as a subject taught) and grade.
For 1997 and prior years, the data on enrolment are obtained from the ESSE survey. This
survey collects data on enrolments by type of school (public, private, schools for the visually or
hearing impaired, federal schools, and Department of National Defence schools). The data are
broken down by age and gender and by grade and gender. Data on public schools are provided
to Statistics Canada by the provinces and territories. For private schools, survey methods vary.
Some provinces supply both private and public schools, while, for other provinces, Statistics
Canada surveys institutions directly.
The enrolment statistics for primary and secondary education from the ESESP provide
information on the grades in which students are enrolled (grade 1 to grade 13), but the ESESP
does not have information on the ages of the pupils. The age of pupils is inferred from the fact
that pupils generally start grade 1 at age 6 in Canada. The pupils enrolled in grade 1 are
assumed to be 6 years old; those enrolled in grade 2 are set to be 7 years old; and so forth.
The enrolment data for postsecondary education are obtained from the Postsecondary Student
Information System (PSIS) for 1992 and subsequent years. For the years before 1992, the data
are obtained from three separate surveys: the University Student Information System (USIS);
the Community College Student Information System (CCSIS); and the Trade/Vocational
Enrolment Survey (TVOC).
The PSIS is a national survey that provides detailed information on enrolments and graduates of
Canadian postsecondary education institutions. The PSIS collects information pertaining to the
programs and courses offered at an institution, as well as information regarding the students
themselves and the program(s) and courses in which they were registered or from which they
have graduated.
In the year 2001, the PSIS began to replace the USIS, the CCSIS, and the TVOC with a single
survey offering common variables for all levels of postsecondary education. Historical enrolment
and graduate data from previous surveys have been converted by using PSIS variable
definitions and code sets in order to maintain the historical continuity of the statistical series.
Data on investment in human capital
Data on investment in human capital arising from the education of each student, cross-classified
by gender, education, and age are obtained from Gu and Wong (2010). The human capital
estimate from Gu and Wong (2010) includes all individuals in the Canadian working-age
population aged 15 to 74. For the purpose of this paper, the human capital estimates from Gu
and Wong (2010) are extended to include individuals aged 6 to 14.
Economic Analysis Research Paper Series - 15 - Statistics Canada – Catalogue no.11F0027M, no. 080
To estimate human capital stock for individuals aged 6 to 14, the paper makes the following
assumptions. Individuals aged 6 are assumed to be enrolled in grade 1 and are expected to
complete grade 8 when they are 14 years old. Those individuals are assigned the lifetime
income of individuals aged 15 with education level 1 in 8 years. Individuals aged 7 are assumed
to be enrolled in grade 2 and are expected to complete grade 8 when they are 14 years old.
Those individuals will be assigned the lifetime income of individuals aged 15 with education
level 1 in 7 years. The lifetime labour income of those individuals aged 8 to 14 is estimated in a
similar fashion.
The discounted lifetime labour income for individuals aged 6 to 14 can be estimated as the
following:
( )
15 15
, , , ,15 , ,15
(1 ) / (1 )
t t a a
s e a s e s a
h h g r sr
÷ ÷
= + + , for 6 14 a s s and e = 1, (5)
where:
,15 a
sr is the probability that an individual of sex s and age a will survive to age 15; g is
real income growth; and r is the discount rate used to discount future income.
Investment in education is measured as the increase in the discounted lifetime labour income
resulting from spending an additional year in school. For students enrolled in education level 2
or above, the estimate of investment in education is based on the difference in human capital
stock between individuals enrolled in that education level and individuals enrolled in a lower
education level:
( )
, , , 1, , , ,
(1 ) / (1 )
t t m m t
s e a s e a m a a m s e a
I h g r sr h
+ + +
= + + ÷ , for 2, e > (6)
where m in the equation denotes the number of years that an individual spends in order to
complete the next education level. It is assumed that individuals with 0?8 years of schooling
spend 3 years to complete the next education level (some or completed high school), that
individuals with some or completed high school spend 2 years to obtain some or completed
postsecondary education below bachelor’s degree, that individuals with some or completed
postsecondary education below bachelor’s degree spend 2 years to obtain a bachelor’s degree,
and that individuals with a bachelor’s degree spend at least 2 years to obtain a master’s degree
or above.
4
For students enrolled in education level 1 (0?8 years of schooling), investment in education is
measured as the increase in their lifetime labour income compared with the lifetime labour
income of those individuals who do not have education. But the human capital stock for those
individuals with no education cannot be estimated directly using data from the Census of
Population, as individuals are not coded as having no education in the household surveys or in
the Census.
To estimate investment in education for those pupils enrolled in education level 1 (0?8 years of
schooling), the fact that individuals start grade 1 at age 6 and that primary-level education is
mandatory in Canada is used. For individuals enrolled in grade 8 who are age 14, investment in
human capital is calculated as the difference between the lifetime income of those individuals
and the lifetime income of the individuals of the same age who are enrolled in a lower grade
(grade 7). Since the individuals who are enrolled in grade 7 are all presumed to be 13 years old,
the lifetime income of individuals who are enrolled in grade 7 who are 14 years of age is not
observed. It is assumed that the individuals who are enrolled in grade 7 who are 14 years of
4. The number of years m that is required to obtain an education level depends on students’ ages. The year of
education of younger students within the education level is calculated by inference. It is assumed that older
students are equally distributed among the various years of education in the education level (for details, see Gu
and Wong 2010).
Economic Analysis Research Paper Series - 16 - Statistics Canada – Catalogue no.11F0027M, no. 080
age will achieve the lifetime income of individuals enrolled in grade 7 who are 13 years of age,
with a one-year lag. Investment in human capital for 14-year-olds is estimated as the following:
( )
,1,14 ,1,14 ,1,13 ,13,14
(1 ) / (1 ) .
t t t
s s s s
I h h g r sr = ÷ + + (7)
In general, investment in education for students enrolled in education level 1 who are of age a
( 6 14 a s s ) can be estimated as the following:
( )
,1, ,1, ,1, 1 , 1,
(1 ) / (1 ) .
t t t
s a s a s a s a a
I h h g r sr
÷ ÷
= ÷ + + (8)
Data on expenditures by education level
Student enrolments are disaggregated by education level in order to construct the cost-based
estimates of education services. The cost of education includes labour costs (salaries of
teachers), capital costs, and intermediate inputs.
5
Data are obtained from the Canadian Input-Output Tables for three levels of education: primary
and secondary education, college education, and university education.
Data on the costs of education are not available at individual education levels before 1997. It is
assumed that the relative differences in unit costs across three education levels did not change
for the period before 1997 and are set to be equal to those in year 1997.
2.4 Estimates of the output of the education sector
This section first presents the income-based estimate and the cost-based estimate of the output
of the education sector. It then compares the two estimates.
The income-based estimate of education output
Chart 1 plots trends in school enrolments by education level over the period from 1976 to 2005.
Enrolment in primary and secondary education fell from 1976 to the mid-1980s as the baby
boomers left the primary and secondary education sectors. Enrolment in grades 1?8 then
gradually increased after the mid-1980s and fell again after the mid-1990s as the school-aged
population declined. Enrolment in secondary school (grades 9 to 13) increased after the mid-
1980s and levelled off after the mid-1990s.
5. Capital cost in the education sector is restricted to capital consumption in the National Accounts and does not
include a return to capital.
Economic Analysis Research Paper Series - 17 - Statistics Canada – Catalogue no.11F0027M, no. 080
Chart 1
School enrolment in Canada, by education level
0
500
1,000
1,500
2,000
2,500
3,000
3,500
1976 1980 1984 1988 1992 1996 2000 2004
Grades 0 to 8 High school College or above
thousands
Source: Statistics Canada, authors' calculations.
Chart 2 plots school enrolments by gender over the period from 1976 to 2005. Enrolments
increased faster for women than for men, as a result of large increases in the former’s
participation in colleges and universities over the period. After the mid-1980s, enrolment by
women exceeded enrolment by men. Women now account for more than half of all pupils
enrolled in schools in Canada.
Economic Analysis Research Paper Series - 18 - Statistics Canada – Catalogue no.11F0027M, no. 080
Chart 2
School enrolment in Canada, by gender
2,000
2,300
2,600
2,900
3,200
1976 1980 1984 1988 1992 1996 2000 2004
Male Female
thousands
Source: Statistics Canada, authors' calculations.
Table 1 presents annual growth rates of student enrolments. The most notable increase was
observed for enrolments in colleges and universities: 2.6% per year from 1976 to 2005. While
some of this increase was due to the demographics of the baby boomers, most of the increase
was attributable to increases in participation in college and university education among
Canadians aged 18 to 26 (Emery 2004).
Table 1
Annual growth in school enrolment in Canada, 1976 to 2005
Characteristic 1976 to 2005 1976 to 1986 1986 to 1996 1996 to 2005
Total 0.4 -0.6 1.1 0.6
Male 0.2 -0.8 1.1 0.4
Female 0.5 -0.3 1.2 0.7
Grades 0 to 8 -0.3 -1.7 1.2 -0.3
High school 0.0 -1.4 1.0 0.5
College or above 2.6 4.1 1.0 2.6
percent
Source: Statistics Canada, authors' calculations.
Table 2 presents the income-based estimates of investment in education in current dollars for
the period from 1976 to 2005. The nominal value of education services in Canada, as measured
by the impact of education on the lifetime labour income of students, is large. In 2005,
investment in education was estimated at $469.9 billion, representing about 34% of gross
domestic product (GDP) in Canada for that year.
Economic Analysis Research Paper Series - 19 - Statistics Canada – Catalogue no.11F0027M, no. 080
Table 2
Nominal investment in education in Canada, by gender and education level,
1976 to 2005
Year Total Male Female Grades 0 to 8 High school College or
above
1976 187.4 102.1 85.2 46.7 94.5 46.2
1977 196.7 107.7 89.0 47.6 101.1 47.9
1978 196.9 108.1 88.8 47.9 99.3 49.7
1979 197.4 110.5 86.9 49.0 98.5 49.9
1980 205.8 111.6 94.3 51.7 103.4 50.6
1981 242.5 130.4 112.1 60.8 118.7 63.1
1982 264.2 139.2 125.0 64.4 124.1 75.6
1983 251.4 131.2 120.2 64.8 106.4 80.2
1984 266.8 145.8 121.0 68.9 110.5 87.4
1985 262.1 145.5 116.6 72.4 103.1 86.6
1986 281.4 151.0 130.4 74.0 113.1 94.3
1987 302.6 160.5 142.1 81.5 124.4 96.8
1988 301.6 158.1 143.5 87.3 118.9 95.4
1989 335.9 183.1 152.7 94.7 135.7 105.4
1990 440.9 242.4 198.5 109.1 173.5 158.3
1991 461.9 245.0 216.9 116.1 166.9 178.8
1992 443.0 235.4 207.6 117.0 165.4 160.6
1993 408.8 228.2 180.6 115.0 150.9 142.9
1994 399.2 217.6 181.7 113.3 145.9 140.0
1995 416.4 217.5 198.9 115.9 153.8 146.7
1996 407.6 224.4 183.2 118.0 145.4 144.3
1997 410.5 230.4 180.1 124.7 143.8 142.0
1998 415.7 232.7 183.0 128.1 142.4 145.1
1999 423.8 234.3 189.6 131.2 147.7 145.0
2000 445.4 238.0 207.4 132.7 160.9 151.8
2001 454.6 241.0 213.6 138.3 153.7 162.6
2002 476.9 265.9 211.0 138.7 171.7 166.5
2003 483.6 259.9 223.7 136.7 178.0 168.9
2004 472.7 246.9 225.8 140.9 152.4 179.4
2005 469.9 251.6 218.4 144.8 145.4 179.8
billions of current dollars
Source: Statistics Canada, authors' calculations.
The nominal value of education services is divided into price and quantity components in tables
3, 4, and 5. The quantity index of education output (weighted sum of enrolments) is estimated to
have increased at an average rate of 0.8% per year for the period from 1976 to 2005, while
unweighted enrolments increased at an average rate of 0.4% per year over the period. The
difference between the weighted and unweighted measures reflects the rising enrolments in
secondary and postsecondary education over the period.
Economic Analysis Research Paper Series - 20 - Statistics Canada – Catalogue no.11F0027M, no. 080
Table 3
Real investment in education in Canada, by gender and education level,
1976 to 2005
Year Total Male Female Grades
0 to 8
High school College or
above
1976 368.7 221.2 149.7 143.5 147.5 83.4
1977 366.4 219.6 148.8 139.1 146.9 84.5
1978 364.4 216.5 149.7 133.8 145.6 87.5
1979 361.2 213.3 149.5 129.7 143.9 89.2
1980 361.4 213.3 149.7 127.1 142.9 92.5
1981 365.4 215.2 151.7 129.5 141.1 97.2
1982 371.0 218.7 153.9 128.3 140.5 104.4
1983 391.3 225.1 166.7 126.9 141.7 123.2
1984 390.6 224.2 166.8 125.8 138.2 127.4
1985 392.5 223.7 169.1 124.7 138.2 130.1
1986 391.4 221.0 170.5 120.0 141.2 129.7
1987 404.7 227.8 177.0 125.6 146.6 132.2
1988 410.2 229.8 180.3 127.1 147.9 134.9
1989 413.5 231.5 181.9 129.5 147.5 136.6
1990 418.2 234.3 183.8 131.4 146.6 140.7
1991 439.4 247.2 192.1 132.5 155.7 150.7
1992 446.1 252.8 193.5 133.5 163.5 148.9
1993 448.6 254.6 194.3 133.9 166.7 147.9
1994 446.2 252.8 193.6 134.2 164.9 147.0
1995 450.0 253.9 196.1 135.3 166.7 147.9
1996 442.2 250.5 191.8 136.1 160.6 145.6
1997 453.3 256.7 196.8 139.5 167.1 147.2
1998 455.2 256.9 198.5 138.9 169.0 147.9
1999 456.7 257.0 199.9 138.7 171.9 146.9
2000 464.8 260.1 204.7 138.5 171.9 154.9
2001 471.7 263.0 208.7 139.1 172.3 160.6
2002 476.9 265.9 211.0 138.7 171.7 166.5
2003 471.8 264.3 207.5 137.4 159.8 175.1
2004 469.5 262.7 206.8 135.1 157.0 178.7
2005 469.9 262.0 207.8 132.6 158.8 180.1
billions of 2002 dollars
Source: Statistics Canada, authors' calculations.
Table 4
Annual growth in the volume index of investment in education in Canada,
1976 to 2005
Characteristics 1976 to 2005 1976 to 1986 1986 to 1996 1996 to 2005
Total 0.8 0.6 1.2 0.7
Male 0.6 0.0 1.3 0.5
Female 1.1 1.3 1.2 0.9
Grades 0 to 8 -0.3 -1.8 1.3 -0.3
High school 0.3 -0.4 1.3 -0.1
College or above 2.7 4.5 1.2 2.4
percent
Source: Statistics Canada, authors' calculations.
Economic Analysis Research Paper Series - 21 - Statistics Canada – Catalogue no.11F0027M, no. 080
Table 5
Annual growth in the price index of investment in education in Canada,
1976 to 2005
1976 to 2005 1976 to 1986 1986 to 1996 1996 to 2005
Total 2.4 3.5 2.5 0.9
Male 2.6 4.0 2.7 0.8
Female 2.1 3.0 2.2 1.1
Grades 0 to 8 4.3 6.6 3.5 2.6
High school 1.2 2.3 1.2 0.1
College or above 2.1 2.8 3.1 0.1
percent
Source: Statistics Canada, authors' calculations.
The price index of education output rose by an average of 2.4% per year for the period from
1976 to 2005. It increased at a much slower rate after the mid-1990s. It grew at an average
annual rate of 0.9% over the period from 1996 to 2005. The slower growth in the price index of
education for that period reflects slower earnings growth in that period.
The growth rates of the price and volume indices of education output are lower than the growth
rates of the price and volume index of gross domestic product (GDP). Real GDP increased by
2.9% per year over the period from 1976 to 2005. The price index of GDP increased by 3.9%
per year during the period.
The rate of growth in the price of education output accounts for about two-thirds of the rate of
growth of nominal education output. In contrast, the rate of growth of the GDP price index
accounts for a lower portion (60%) of the rate of growth in nominal GDP.
The level of investment in education for men has consistently exceeded that for women, as
shown in Table 2. The difference between the two narrowed around the mid-1980s as a result of
increased enrolments by women over that period. After the mid-1980s, the difference in
investment in education between women and men was virtually unchanged.
The growth rate of investment in education in constant prices was much higher for women than
for men before the mid-1980s; the growth rates for women and for men were similar after the
mid-1980s (as shown in Table 4). This difference in investment in education between men and
women reflects the difference in their enrolment numbers as discussed above. For the period
from 1976 to 1986, investment in education for women increased by 1.3% per year, while
investment in education for men remained unchanged over the period. After the mid-1980s,
investment in education for men grew at a rate similar to that for women.
The real output of the postsecondary education sector (colleges and universities), as measured
by investment in education, increased the most (as shown in Table 4), growing by 2.7% per
year during the period from 1976 to 2005. The output of the primary and secondary education
sector changed little over that period.
Tables 6 and 7 present the underlying data on investment per student in current and constant
dollars that are used to produce the income-based estimates of education output. Those
estimates of real investment per student are also plotted in Charts 3 and 4.
Economic Analysis Research Paper Series - 22 - Statistics Canada – Catalogue no.11F0027M, no. 080
Table 6
Nominal investment in education per student in Canada, by gender and education
level, 1976 to 2005
Year Total Male Female Grades
0 to 8
High school College or
above
1976 33.9 36.0 31.6 14.7 60.2 58.2
1977 36.1 38.7 33.3 15.5 65.1 57.9
1978 36.9 39.8 34.0 16.2 64.5 59.6
1979 37.7 41.5 33.8 17.1 65.3 58.5
1980 39.8 42.5 37.0 18.4 70.7 57.0
1981 46.5 49.2 43.8 21.2 83.7 68.0
1982 50.6 52.4 48.7 22.7 89.0 76.5
1983 47.0 48.4 45.7 23.0 76.3 70.4
1984 50.1 54.1 46.1 24.7 80.5 75.3
1985 49.2 54.2 44.2 26.2 75.1 73.2
1986 53.9 57.8 50.0 27.7 83.2 79.3
1987 56.2 59.6 52.7 29.2 89.8 79.8
1988 55.4 58.4 52.5 30.9 86.2 77.0
1989 60.9 66.8 55.0 32.9 98.0 83.8
1990 78.6 87.0 70.4 37.4 124.0 122.6
1991 80.5 85.8 75.2 39.5 115.9 131.8
1992 76.4 81.3 71.4 39.5 111.5 118.4
1993 70.3 78.6 62.0 38.7 100.3 106.4
1994 68.7 75.1 62.3 38.1 96.8 105.3
1995 71.2 74.7 67.7 38.7 100.9 110.7
1996 69.9 77.2 62.6 39.1 97.0 109.8
1997 69.1 77.8 60.5 40.3 93.9 108.1
1998 69.8 78.6 61.2 41.6 92.0 109.8
1999 70.8 78.9 62.9 42.6 94.6 107.8
2000 74.1 80.1 68.3 43.2 103.6 109.5
2001 74.9 80.4 69.5 44.9 99.3 113.0
2002 78.1 88.2 68.2 45.2 111.1 111.3
2003 78.7 85.9 71.7 45.1 117.1 106.3
2004 76.9 81.7 72.2 47.2 98.7 110.6
2005 76.6 83.5 69.9 49.5 93.0 109.0
thousands of current dollars
Source: Statistics Canada, authors' calculations.
Economic Analysis Research Paper Series - 23 - Statistics Canada – Catalogue no.11F0027M, no. 080
Table 7
Real investment in education per student in Canada, by gender and education
level, 1976 to 2005
Year Total Male Female Grades
0 to 8
High school College or
above
1976 66.7 78.1 55.5 45.3 93.9 105.2
1977 67.2 78.9 55.7 45.2 94.6 102.2
1978 68.3 79.7 57.2 45.2 94.6 104.9
1979 69.0 80.2 58.1 45.1 95.3 104.5
1980 69.9 81.2 58.8 45.1 97.6 104.1
1981 70.1 81.1 59.2 45.2 99.5 104.8
1982 71.0 82.3 60.0 45.2 100.8 105.7
1983 73.2 83.0 63.3 45.1 101.6 108.1
1984 73.4 83.2 63.5 45.1 100.6 109.8
1985 73.7 83.3 64.1 45.1 100.6 110.0
1986 75.0 84.6 65.4 45.0 103.8 109.2
1987 75.1 84.6 65.6 45.0 105.9 109.0
1988 75.3 84.8 65.9 45.0 107.2 108.8
1989 74.9 84.4 65.5 45.0 106.5 108.6
1990 74.6 84.1 65.1 45.0 104.8 109.0
1991 76.6 86.6 66.6 45.0 108.1 111.1
1992 76.9 87.3 66.6 45.1 110.3 109.8
1993 77.1 87.7 66.7 45.1 110.8 110.2
1994 76.8 87.3 66.4 45.1 109.4 110.6
1995 76.9 87.2 66.7 45.1 109.3 111.6
1996 75.8 86.2 65.6 45.1 107.1 110.8
1997 76.3 86.7 66.1 45.1 109.0 112.1
1998 76.5 86.7 66.4 45.1 109.2 112.0
1999 76.3 86.5 66.3 45.1 110.1 109.3
2000 77.4 87.5 67.5 45.1 110.7 111.7
2001 77.7 87.8 67.9 45.2 111.2 111.7
2002 78.1 88.2 68.2 45.2 111.1 111.3
2003 76.8 87.4 66.6 45.3 105.2 110.3
2004 76.4 86.9 66.2 45.3 101.7 110.1
2005 76.6 87.0 66.5 45.3 101.6 109.2
thousands of 2002 dollars
Source: Statistics Canada, authors' calculations.
Investment in education per student in constant prices rose steadily over time for both men and
women (Chart 3). This reflects rising enrolment in secondary and postsecondary education. The
value of investment in education per student in constant dollars was greater for men than for
women. The difference between women and men decreased slowly in the period before 1990.
After 1990, the difference was broadly stable. In 2005, investment in education per student for
women was about three-quarters that for men.
Economic Analysis Research Paper Series - 24 - Statistics Canada – Catalogue no.11F0027M, no. 080
Chart 3
Real investment in education per student in Canada, by gender
0
20
40
60
80
100
1976 1980 1984 1988 1992 1996 2000 2004
Male Female
thousands of 2002 dollars
Source: Statistics Canada, authors' calculations.
The real value of investment in education per student in colleges and universities also increased
over time (Chart 4). In 2005, the real value of investment in education for a student enrolled in
college or university was more than two times that for a student enrolled in primary education.
Chart 4
Real investment in education per student in Canada, by education level
0
20
40
60
80
100
120
1976 1980 1984 1988 1992 1996 2000 2004
Grades 0 to 8 High school College or above
thousands of 2002 dollars
Source: Statistics Canada, authors' calculations.
Economic Analysis Research Paper Series - 25 - Statistics Canada – Catalogue no.11F0027M, no. 080
The cost-based estimate of education output
Table 8 and Chart 5 present the cost-based estimate of the value of education services in
Canada. For comparison, they also present the income-based estimate of the value of
education services.
Table 8
Annual growth in cost-based and income-based estimates of education
services in Canada
Estimates 1976 to 2005 1976 to 1986 1986 to 1996 1996 to 2005
Cost-based
Nominal value 5.8 8.7 5.0 3.5
Quantity index 0.6 0.0 1.1 0.9
Price index 5.2 8.8 4.0 2.6
Income based
Nominal value 3.2 4.2 3.8 1.6
Quantity index 0.8 0.6 1.2 0.7
Price index 2.4 3.6 2.5 0.9
percent
Source: Statistics Canada, authors' calculations.
Chart 5
The income-based and cost-based estimates of the volume index of the
education-sector output in Canada
0.8
0.9
1.0
1.1
1.2
1.3
1.4
1976 1980 1984 1988 1992 1996 2000 2004
Index (1976=1)
Income-weights Cost-weights
Source: Statistics Canada, authors' calculations.
The cost-based and income-based approaches yield similar estimates of the growth rates of the
real education output, particularly after the mid-1980s. The cost-based estimate increased by
0.6% per year over the period from 1976 to 2005, while the income-based estimate rose by
0.8% per year over the period. The income-based approach yields a slightly higher growth rate
of education output. The difference in the rate of growth between the two estimates can be
attributed to the differences in the level of aggregation for enrolments and weights used to
aggregate enrolments between the two approaches. For the income-based approach,
enrolments are disaggregated by gender, education level (one of five levels), and age (age 6 to
Economic Analysis Research Paper Series - 26 - Statistics Canada – Catalogue no.11F0027M, no. 080
74). The five education levels are defined as follows: 0?8 years of schooling; some or
completed high school; some or completed postsecondary school below bachelor’s degree;
bachelor’s degree; and master’s degree or above. For the cost-based approach, enrolments are
disaggregated into three education levels (primary and secondary, college, and university) as a
result of the availability of data on education expenditures.
6
While the two approaches yield similar estimates of the growth in real education output, they
produce very different estimates of the level of education output (Chart 6). The income-based
estimate of the nominal value of education services was about 6.8 times as large as the cost-
based estimate in 2005.
Chart 6
Ratio of income-based to cost-based estimates of the nominal value of
education services in Canada
0
2
4
6
8
10
12
14
16
1976 1980 1984 1988 1992 1996 2000 2004
ratio
Ratio of investment in education to costs of education
Source: Statistics Canada, authors' calculations.
The relative levels of the two estimates of education output in Chart 6 can be interpreted as the
ratio of the economic benefits of education to the costs of education. That ratio declined from
1976 to the mid-1980s. It remained virtually unchanged from the mid-1980s to 2000, and
declined again after 2000. This suggests that the return to education declined from 1976 to the
mid-1980s; it declined again post 2000, following a period of little change from the mid-1980s to
2000. This is consistent with the findings on the trends in the rate of return to education in
Canada (Emery 2004). Emery examined the rate of return to undergraduate university
education for the period from 1960 to 2000 and observed reductions in returns to university
education in the late 1970s and early 1980s; by 1985, the returns to education had resumed the
levels of the 1960s and early 1970s.
6. The difference between weighted and un-weighted school enrolment estimates reflects the compositional shift
between types of students. As the un-weighted school enrolment declined at 0.6% per year from 1976 to 1986,
the composition shift was an increase of 0.6% per year for the cost-based output estimate and it was an increase
of 1.2% per year for the income-based estimate for that period. The larger composition shift in the income-based
estimate reflects the effect of large decline in enrolment in primary education in that period that is captured in the
income-based estimate, but not in the cost-based estimate that does not have primary education as a separate
education category,
Economic Analysis Research Paper Series - 27 - Statistics Canada – Catalogue no.11F0027M, no. 080
The cost-based estimate in Table 8 can be extended to include the research component of the
university sector output. The research output is estimated by the number of publications that
can be obtained from the Canadian Bibliometric Database (Gingras et al., 2008). The estimated
number of publications from that database increased by 3.3% per year over the period 1996 to
2005, while university enrolment increased by 2.6% per year for the same period. The cost-
based estimate of the university output that aggregates research and teaching components
using the relative cost shares of teaching and research is estimated to have increased by 2.8%
per year for the 1996 to 2005 period, which was slightly higher than the 2.6% annual growth of
university output estimate that only includes school enrolment.
7
The cost-based estimate of the
output of the total education sector increased by 1.0% per year over the period 1996 to 2005
when university research is included, compared with 0.9% annual growth when university is not
included.
Our evidence suggests that the research component has little effect on the overall growth of
education output, though there are some uncertainties in the consistency in the estimated
number of publications over time. The rest of the paper will therefore focus on the estimate that
excludes university research.
2.5 Comparison with the System of National Accounts
In contrast to the two experimental estimates presented above, the System of National
Accounts also produces an estimate of the education sector output that is based mostly on
inputs. The nominal value of education output is the sum of labour compensation, intermediate
inputs, and capital consumption allowance. The volume of education output is equal to the
volume of total inputs used for primary and secondary education and for college education. For
university education, the volume of education output was measured in the past by the volume of
total inputs; it is measured by student enrolments for more recent years.
The existing national accounts input-based estimate of education output is compared with the
income-based estimate and the cost-based estimate of education output in Chart 7. The results
show that the two new estimates of the volume of education output increased at a slower rate
than the current national accounts estimate of education output. The national accounts estimate
of education output increased by 1.2% per year over the period from 1976 to 2005, while the
income-based estimate and the cost-based estimate rose by 0.8% and 0.6%, respectively. The
nominal value of education output estimated from the cost-based approach and the nominal
value of education output estimated from the existing national accounts are both equal to the
sum of labour costs, capital consumption allowance, and intermediate inputs in the education
sector. The growth in the nominal value of education output from the cost-based approach and
from the existing national accounts is much faster than the growth from the income-based
approach (5.8% per year versus 3.2% per year).
7. Allen (1998) breaks down total costs of universities in British Columbia between different functions. He finds that
67% of the total costs in academic year 1989/90 is linked to teaching, the remainder 33% is attributed to research
and services. The cost shares are used for aggregating reach and teaching components of the university output.
Economic Analysis Research Paper Series - 28 - Statistics Canada – Catalogue no.11F0027M, no. 080
Chart 7
Annual growth rates of education output in Canada, 1976 to 2005
0 1 2 3 4 5 6 7
Nominal value
Quantity index
Price index
percent
System of National Accounts estimate Income-based Cost-based
Source: Statistics Canada, authors' calculations.
Chart 8 presents the underlying data on the cost of education per student that are used to
produce cost-based estimates of education output. The unit cost was the highest for university
education, the lowest for primary and secondary education, and in between for college
education. The unit cost increased for university education and for primary and secondary
education from 1997 to 2005, while it changed little for college education during this period.
Economic Analysis Research Paper Series - 29 - Statistics Canada – Catalogue no.11F0027M, no. 080
Chart 8
Cost of education per student in Canada
0
5
10
15
20
1997 1999 2001 2003 2005
Primary and secondary College Univesity
thousands
Source: Statistics Canada, authors' calculations.
Some of the differences in expenditures per student between university education and other
types of education are due to the presence of a research function in universities. As the exact
split in total expenditures between teaching and research is not available, all expenditures are
included in the cost-based measure of education output used here.
8
Chart 9 plots trends in labour productivity of the Canadian education sector based on the three
alternative measures of education output (two output-based measures of education services
and one input-based measure of education services). All three measures of labour productivity
show that labour productivity declined in the Canadian education sector before 1990 and
increased after 1990. Labour productivity based on income-based estimates of education output
declined at an average annual rate of 1.6% in the education sector for the period from 1976 to
1990. During the period from 1990 to 2005, labour productivity increased by 0.4% per year.
8. A more detailed cost-based measure of university education output would distinguish between different types of
programs (such business programs, science and engineering programs, and arts programs), since education
expenditures are different across those programs. For primary and secondary education, more detail would
require a distinction between special programs and regular programs, since expenditures for special education are
much higher.
Economic Analysis Research Paper Series - 30 - Statistics Canada – Catalogue no.11F0027M, no. 080
Chart 9
Labour productivity of the education sector in Canada
0
20
40
60
80
100
120
1976 1980 1984 1988 1992 1996 2000 2004
Index (1976=100)
Income-weights Cost-weights Input-based
Source: Statistics Canada, authors' calculations.
The decline in labour productivity before 1990 reflects the high growth in the number of teachers
in that period. Total hours worked in the education sector increased by 2.5% per year before
1990 while the number of students barely increased during that period. After 1990, the growth in
total hours worked in the education sector was slow, while the number of students increased at
a faster pace. For that period, labour productivity growth increased by half of one percentage
point per year.
3 Accounting for quality changes in education services
A significant challenge for measuring the output of the education sector arises when it comes to
adjusting for changes in the quality of education services over time. To the extent that the
income and cost estimates of the volume of education output do not capture quality
improvements, the changes in real education output will be underestimated and price changes
will be overestimated.
The weighted sum of student enrolments across different categories (classified by education
level, gender, and age) is a correct measure of the volume of education output when students
within each category are homogeneous and comparable over time. When students within each
group are heterogeneous and their characteristics change over time, the weighted sum of
student enrolments is no longer a correct measure of education output. Students taught in
smaller classes by more experienced teachers require an upward adjustment of the volume of
education services and a downward adjustment of their price. Similar adjustments must be
made for students with higher scores who graduate rather than drop out.
The human capital approach, or income-based approach, for the measurement of education
output has been suggested as being an approach to quality-adjusting education output. As
discussed above, the human capital approach is best viewed as an alternative to the cost-based
approach for measuring education output. The two approaches differ in the prices used to value
education services. The cost-based approach values education services by using expenditures
Economic Analysis Research Paper Series - 31 - Statistics Canada – Catalogue no.11F0027M, no. 080
per student, while the income-based approach values education services by using increments in
lifetime labour income from increases in education.
The purpose of quality adjustment is to isolate pure price changes from price changes due to
changes in characteristics of students (Schreyer 2009a). To the extent that education
expenditures and the increments in lifetime income due to education reflect improvements in
education quality, they should be counted as increases in the volume of education output rather
than as increases in the price of education output.
Quality adjustment is not new in the National Accounts. Quality adjustment has been made for
the output of computers and telecommunication equipment in Canada, and other countries. To
construct a quality-constant price index for computers, semiconductors, and
telecommunications equipment, previous studies have used hedonic methods. Triplet (2006)
has provided an extensive survey of the research on the construction of hedonic price indices
for computers and other information and communication products.
The two components of data used to estimate the volume and price indices of education output
are the price and quantity data associated with student enrolments, disaggregated by education
level, gender, and age. The quantity component is the number of students or the number of
student hours. The corresponding price component is increments in lifetime income due to
education, per student, for the income-based approach; it is unit expenditures for the cost-based
approach.
Diewert (2011) and Schreyer (2009a) discussed the hedonic method that can be used to take
into account quality changes in the output of the education sector. The hedonic method has two
steps. First, data are collected on various factors that may affect the quality of the education that
students receive. These factors can include the quality and quantity of inputs to student
education (class size or the number of experienced teachers) and the outcomes of education
(test scores).
The next step is to estimate a hedonic function that relates the indicators of education quality to
the price component of education output, which is investment in education per student for the
income-based approach and education expenditures per student for the cost-based approach.
The coefficients on the indicators of education quality are also known as the implicit prices of
the indicators of education quality (Triplet 2006). This second step is often ignored in previous
empirical studies. Rather, the coefficients that relate the indicators of education quality to
education output are assumed in those studies.
Once the indicators of education quality are collected and implicit prices associated with those
indicators are estimated from hedonic regressions, changes in the price index of education
output that can be attributed to the changes in education quality can be estimated. The imputed
changes in the price index of education output resulting from changes in education quality are
then included in the change in the quality-adjusted volume index of education output.
The rest of the paper will focus on hedonic quality adjustment for the volume and price indices
of education output from the income-based approach. Nevertheless, the same approach can be
used for quality adjustment with respect to the measures of education output from the cost-
based approach.
3.1 Education quality, test scores
For this paper, test scores are used as an indicator of education quality. Specifically, time-series
data on test scores in literacy and related cognitive skills for the individuals that obtained a
specific qualification in different years are used as an indicator of education quality. The time
series data on test scores are constructed from the Canadian data from the 2003 International
Economic Analysis Research Paper Series - 32 - Statistics Canada – Catalogue no.11F0027M, no. 080
Adult Literacy and Skills Survey (2003 IALSS), a seven-country initiative conducted in 2003 that
measured prose and document literacy as well as numeracy and problem-solving skills
(Statistics Canada and OECD 2005).
9
The 2003 IALSS includes standard questions on demographics, labour force status, and
earnings, but it also attempts to measure literacy and related cognitive skills in four broad areas:
prose literacy, document literacy, numeracy, and problem solving. Test scores in those four
broad areas of literacy and cognitive skills will be used to capture the quality of education.
Hanushek and Zhang (2006) also used the literacy scores from the 2003 IALSS to measure the
quality of education.
The "prose literacy" questions in the surveys assess skills ranging from identifying
recommended dosages of aspirin from the instructions on an aspirin bottle to using an
announcement from a personnel department in order to answer a question set out in phrasing
different from that used in the text. The "document literacy" questions, which are intended to
assess capabilities to locate and use information in various forms, range from identifying
percentages in categories in a pictorial graph to assessing an average price by combining
several pieces of information. The "numeracy" component ranges from simple addition of pieces
of information on an order form to calculating the percentage of calories from fat in a Big Mac
from figures provided in a table. The "problem-solving" component assesses goal-directed
thinking and action in situations for which no routine solutions exist.
The 2003 IALSS asks respondents about their age at the time of the survey (2003) and the age
at which they completed their highest level of education. The information is then used to infer
the year when respondents completed the highest level of education. The average test scores
for individuals who completed an education level in a given year is used as indicators of
education quality at the education level in that year.
Individuals may lose and gain skills as a result of the aging process and on-the-job training,
respectively. On the one hand, if individuals tend to lose skills over time as a result of aging,
exam scores for early cohorts of graduates will underestimate the quality of education for those
cohorts. On the other hand, if individuals tend to gain skills over time as a result of on-the-job
training, exam scores for early cohorts will overestimate the quality of education for those
cohorts. The effect of aging and on-the-job training on the text scores for various cohorts of
graduates is controlled for in regression analysis in order to provide an unbiased estimate of
changes in education quality.
Literacy scores of cohorts of graduates may also reflect the effect of student ability and family
background in addition to the effect of education.To control for the effect of student ability,the
following three dummy variables from the 2003 IALSS are included in the regression for literacy
scores (Green and Riddell 2007). A dummy variable equals 1 if the respondent agreed or
strongly agreed with the statement that he or she got good grades in math while in school; a
dummy variable equals 1 if the respondent agreed or strongly agreed with the statement that
teachers often went too fast and he or she often got lost; and a dummy variable equals 1 if the
respondent answered that he or she received remedial help or attended special classes to
assist him or her with reading at school. To control for the effect of family background on test
scores, variables on parental education and immigrant status are added.
Since the objective of this study is to examine the education sector in Canada, anyone born
outside of Canada or educated outside of Canada is excluded from the sample. The over-
sampled First Nations observations from the 2003 IALSS are also dropped. The survey covers
individuals over age 16, but individuals who list their main activity as student are excluded, in
order to highlight the effect of completed schooling and what happens to literacy and skills once
9. The OECD Program for International Student Assessment (PISA) survey provides alternative data source for
estimating changes in education quality over time.
Economic Analysis Research Paper Series - 33 - Statistics Canada – Catalogue no.11F0027M, no. 080
individuals have completed their schooling. Those individuals who completed the highest level
of education before 1976 are excluded, since the focus of the paper is on the changes in the
education quality for the period after 1976 in this paper.
The method that is used to obtain time series data on test scores for various cohorts of
graduates from IALSS 2003 is similar to the one used by Coulombe et al. (2004) in their study
on the long-term relationship between human capital and economic growth.
In summary, to estimate the test scores for the cohorts of graduates at each education level, the
following regression on literacy scores is estimated using the Canadian data in the 2003 IALSS:
2 3 4 5
1 2 3 4 5
ln( ) 2 3 4 5
( * 1 ) ( * 2 ) ( * 3 ) ( * 4 ) ( * 5 )
+ Z .
it it it it it
it it it it it
it it
score E E E E
t E t E t E t E t E
o
o o o o o
| | | | |
¸ c
= + + + +
+ + + + +
+
(9)
The dependent variable is the literacy scores of the individual i who achieved the highest level
of education in year t, where the literacy score is an average score in four broad areas of
literacy and related cognitive skills: prose literacy, document literacy, numeracy, and problem
solving. The variables E1 to E5 are the dummy variables indicating the highest level of
education that the individual achieved. For example, E1 is set equal to 1 if the highest level of
education for that individual is level 1 (0?8 years of schooling). t is the year in which the
individual completed the highest level of education, and is set equal to 1 for the year 1976, 2 for
the year 1977, and so forth. The vector Z is the set of control variables, including gender, age,
age squared, proxies for student abilities, and variables for family background.
The estimated coefficients
1
? to
5
? measure the percent change in the literacy scores of
graduates at each education level over time and will be used to capture the change in the
quality of education services at each education level.
The equation is estimated using the weighted least square approach that uses population size
as weights. The regression results are presented in Table 9: for instance, the coefficient on the
variable time x 0 to 8 years of schooling shows the change in the literacy scores for the
individuals who obtained 0 to 8 years of schooling. The results show that test scores increased
over time for graduates at education levels 1 (primary education) and 2 (secondary education).
However, no statistically significant changes in test scores are observed for graduates at the
postsecondary education (education levels 3 to 5). Literacy scores increased by 1% per year at
the primary education level and increased by 0.2% per year at the secondary-education level.
Economic Analysis Research Paper Series - 34 - Statistics Canada – Catalogue no.11F0027M, no. 080
Table 9
Regression results for the log of literacy scores in Canada
Variable
coefficient t-stat coefficient t-stat coefficient t-stat
Constant 5.3040 106.75 5.1631 63.97 5.0467 43.36
Some or completed high school 0.3118 6.24 0.4170 5.11 0.4259 3.91
Post-secondary education below
bachelor's 0.3774 7.55 0.5110 6.27 0.5273 4.85
Bachelor's degree 0.4426 8.86 0.5657 6.95 0.5665 5.21
Master's degree and above 0.4872 9.69 0.6077 7.35 0.6168 5.66
Time × 0 to 8 years of schooling ... ... 0.0086 2.24 0.0099 1.93
Time × some or completed high school ... ... 0.0021 3.42 0.0017 1.75
Time × post-secondary education below
bachelor's ... ... 0.0005 0.70 -0.0008 -1.07
Time × bachelor's degree ... ... 0.0011 1.76 -0.0006 -0.78
Time × master's degree or above ... ... 0.0012 1.35 -0.0008 -1.09
Female ... ... ... ... -0.0102 -1.74
Age ... ... ... ... 0.0080 4.44
Age squared ... ... ... ... -0.0001 -5.82
Good math grades ... ... ... ... 0.0473 8.20
Teachers too fast ... ... ... ... -0.0258 -2.01
Reading difficulties ... ... ... ... -0.0637 -5.21
Mother post-secondary education ... ... ... ... 0.0360 5.69
Father post-secondary education ... ... ... ... 0.0338 5.74
Mother Canadian ... ... ... ... -0.0143 -1.37
Father Canadian ... ... ... ... 0.0051 0.53
Model 3 Model 1 Model 2
Source: Statistics Canada, authors' calculations.
The results for the effects of the student-ability and family-background variables on literacy
scores are consistent with those in Green and Riddell (2007). Student ability and parental
education levels both have positive effects on literacy scores. The immigration status of parents
does not appear to have a significant effect on literacy scores. Controlling for the effect of
student ability and of family background does not lead to a significant difference in the estimated
changes in education quality.
3.2 Hedonic regression
Canadian data from the 2003 IALSS are used to estimate the hedonic function for education
output that relates test scores to increments in lifetime incomes. Ideally, it would be prefereable
to construct increments in lifetime incomes for all individuals in the sample and to estimate a
hedonic function that relates test scores to gains in lifetime income. In this paper, marginal gains
in current labour income from education (or returns to education) are used as a proxy for gains
in lifetime labour incomes.
The hedonic regression for the output of education services is estimated as a standard Mincer-
type human capital earnings function:
( ) ( )
( ) ( )
2 3
4 5
5
ln( ) ln( ) 2 ln( ) 3
ln( ) 4 ln( ) 5
+ Z .
it it it it it
it it it it
it it
earnings score A score A
score A score A
o
o o | o |
o | o |
¸ c
= + + + +
+ + + +
+
(10)
The earnings are annual earnings. The dummy variables A2 to A5 are the dummy variables that
represent the levels of education achieved. It is assumed that the individuals who achieved a
higher education level also received the lower level. For an individual whose highest level of
Economic Analysis Research Paper Series - 35 - Statistics Canada – Catalogue no.11F0027M, no. 080
education is level 5, dummy variables A2 to A5 are all set equal to 1. For an individual whose
highest level of education is level 4, dummy variables A2 to A4 are all set equal to 1, and
dummy variable A5 is set equal to 0. The vector Z is the set of control variables including
gender, age, age squared, and proxies for student abilities. The variables for family background
are excluded in the estimation, since the variables are found to have no effect on individuals’
earnings.
The coefficients on the variables A2 to A5 represent the marginal wage gains of achieving that
education level over the previous level of education. The estimated marginal gains are used as
a proxy for investment in education at that level. In the regression, those marginal gains are
allowed to change with test scores. The coefficient ? on the log of literacy scores represents
the implicit prices associated with literacy scores. It is assumed that a 1% increase in test
scores will have the same percentage-point contribution to the marginal gains of achieving an
education level, since are no statistically significant differences are found in that coefficient
between the five levels of education used for this paper. In general, coefficient ? will vary
across education levels.
The sample used for estimating the hedonic regression is similar to the one used for estimating
literacy scores, except that those individuals who are self-employed are eliminated for the
hedonic regression. Those individuals whose annual earnings are less than $2,000 or over
$1,000,000 are eliminated from the sample. The latter restriction eliminates retired individuals,
the unemployed, and others who are not in the labour force. It also cuts out a small number of
individuals with earnings that are substantial outliers relative to the rest of the sample. Self-
employed workers are also dropped from the sample in order that the remuneration of skills in
the labour market be examined, since self-employment earnings reflect both remuneration and
returns to capital.
The parameter estimates from the hedonic regression are presented in Table 10. The estimated
? is 0.57 and is statistically significant. This suggests that a 1% increase in test scores is
associated with a 0.57% increase in marginal gains from achieving a higher level of education.
Table 10
Hedonic regression results for the price of education output in
Canada
Parameters
estimates t-statistic
Intercept (alpha
0
) 8.5386 68.90
Some or completed high school (alpha
2
) -2.3987 -6.95
Post-secondary education below bachelor's (alpha
3
) -2.8526 -8.49
Bachelor's degree (alpha
4
) -2.9765 -8.74
Master's degree and above (alpha
5
) -3.1603 -8.81
Implicit prices associated with literacy scores (beta) 0.5657 9.74
Female (gamma
0
) -0.3227 -10.99
Experience (gamma
1
) 0.0930 19.69
Experience squared (gamma
2
) -0.0019 -14.53
Good math grades (gamma
3
) 0.0948 2.82
Teachers too fast (gamma
4
) -0.0812 -1.29
Reading difficulties (gamma
5
) -0.0829 -1.46
Regression results
Source: Statistics Canada, authors' calculations.
Economic Analysis Research Paper Series - 36 - Statistics Canada – Catalogue no.11F0027M, no. 080
3.3 Quality-adjusted price and volume indices of education output
The results from estimating the literary score and earnings regressions can be used to estimate
the quality-adjusted price and volume indices of education output. The estimated literacy score
equation provides an estimate of average literacy scores for individuals who achieved education
level e in year t ( )
t
e
score . The earnings regression provides an estimate of the effect of literacy
scores on returns to education ( ? ). The quality-adjusted price index for student enrolments
disaggregated by sex, education level, and age is estimated as follows:
, , , ,
/ ( ),
t t
s e a s e a
adjI I hedonic quality adjustment = (11)
where ( ) ( ) .
t
e
hedonic quality adjustment score
|
=
Those quality-adjusted price indices are then aggregated to obtain the quality-adjusted price
index of education services by means of Tornqvist aggregation. The quality-adjusted quantity
index of education services is calculated by dividing the nominal value of education output by
the quality-adjusted price index.
Table 11 presents the quality-adjusted output of the education sector. The quality adjustment
raised the growth of education output by 0.2 percentage points per year and lowered the growth
of the corresponding price index by 0.2 percentage points per year. The 0.2-percentage-point
quality-adjustment factor for Canada is similar to the 0.25% quality-adjustment factor per year
that is utilized in the U.K. official estimates of the volume index of education services (see
Fraumeni et al. 2008).
Table 11
Annual growth in the quality-adjusted education output in Canada determined
by means of the income-based approach
Estimates 1976 to 2005 1976 to 1986 1986 to 1996 1996 to 2005
Without quality adjustment
Volume index 0.8 0.6 1.2 0.7
Price index 2.4 3.5 2.5 0.9
With quality adjustment
Volume index 1.0 0.8 1.4 0.9
Price index 2.2 3.3 2.3 0.7
percent
Source: Statistics Canada, authors' calculations.
Economic Analysis Research Paper Series - 37 - Statistics Canada – Catalogue no.11F0027M, no. 080
4 Conclusion
Several statistical agencies of OECD countries have carried out research to develop output-
based measures of education services and of other non-market service sectors, such as health
services, over the last decade. The various approaches can be classified into two broad groups.
The first is the income-based approach, or human capital approach, developed in a series of
papers by Jorgenson and Fraumeni (1989, 1992, 1996). The second approach is the cost-
based approach, which can be traced back to the estimates of investment in education based
on expenditures put forward by Kendrick (1976).
This paper uses both approaches to estimate the output of the Canadian education sector. It
finds that the two approaches yield similar estimates of the growth in education output. Over the
period from 1976 to 2005, the income-based measure of the real output of the education sector
in Canada is estimated to have increased by 0.8% per year, while the cost-based estimate rose
by an estimated 0.6% per year.
However, the two approaches produce very different estimates of the level of education output.
In 2005, the income-based estimate of the nominal education output was about 6.8 times as
large as the cost-based estimate of the education output. There are a number of potential
explanations for this difference. First, the coverage of the education sector between the two
approaches differs. The education services sector in the income-based approach includes the
inputs of non-market activities (the opportunity cost of students’ time), while the cost-based
approach does not. Second, the income-based approach attributes the earning differentials
among individuals to the effect of investment in formal education (Rosen 1989). To the extent
that the earning differential also captures the effect of on-the-job training, gender discrimination,
and individuals’ ability, the income-based approach overestimates the level of education output.
The paper also makes a methodological contribution to the measurement of education output.
While previous studies have attempted to capture quality changes in education output, they
have often lacked precise methodologies to do so. This paper points out that quality adjustment
for education output is no different from quality adjustment for computer output. The hedonic
methods that are used to construct a quality-constant price index for computers can also be
used to capture quality improvement in education output.
The paper finds that the hedonic adjustment for quality changes in education services raised the
growth of education output by 0.2 percentage points per year over the period from 1976 to
2005.
While the appropriate approach for this type of adjustment should be the hedonic methods that
have been used by statistical agencies for quality adjustment with respect to products such as
computer output, the data for implementing such methods are often not available or incomplete.
Both time-consistent data on the various indicators of education quality (such as class size, test
scores, and teacher qualities) and surveys that can be used to estimate hedonic regressions
that link the indicators of education quality to the price of education output are needed for better
hedonic estimates.
Economic Analysis Research Paper Series - 38 - Statistics Canada – Catalogue no.11F0027M, no. 080
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Jorgenson, D.W., and B.M. Fraumeni. 1992. "The Output of the Education Sector." Output
Measurement in the Service Sector. Z. Griliches (ed.). Chicago, Illinois. University of Chicago
Press. p. 303?338.
Jorgenson, D.W., and B.M. Fraumeni. 1996. "Investment in Education and U.S. Economic
Growth." Productivity, Volume 1: Postwar Economic Growth. D.W. Jorgenson (ed.). Cambridge,
Massachusetts. The MIT Press.
Kendrick, J.W. 1976. The Formation and Stocks of Total Capital. New York. Columbia
University Press.
Liu, G. 2011. Measuring the Stock of Human Capital for Comparative Analysis: An Application
of the Lifetime Income Approach to Selected OECD Countries. Paris. Statistics Directorate,
Organisation for Economic Co-operation and Development. Statistics Working Paper no. 6.
Mincer, J. 1974. Schooling, Experience and Earnings. New York. Columbia University.
Organisation for Economic Co-operation and Development. 2010. The OECD Human Capital
Project: Progress Report. Paris. Organisation for Economic Co-operation and Development.
Rosen, S. 1989. "Comment on ‘The Accumulation of Human and Non-Human Capital, 1948–
1984’." The Measurement of Savings, Investment, and Wealth. R.E. Lipsey and H. Stone Tice
(eds.). Chicago, Illinois. University of Chicago Press.
Schreyer, P. 2009a. Output and Outcomes in Health and Education. Paris. Organisation for
Economic Co-operation and Development.
Schreyer, P. 2009b. Towards Measuring the Volume of Health and Education Services, Draft
Handbook. Paris. Organisation for Economic Co-operation and Development.
Schultz, T.W. 1961. "Investment in Human Capital." American Economic Review. Vol. 51. No. 1.
p. 1?17.
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operation and Development (OECD). OECD Publishing.
doc_225319458.pdf
The Economic Analysis Research Paper Series provides for the circulation of research conducted by the staff of National Accounts and Analytical Studies, visiting fellows, and academic associates.
Measuring the Economic Output
of the Education Sector
in the National Accounts
by Wulong Gu and Ambrose Wong
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Telephone: 1-800-263-1136
Catalogue no. 11F0027M — No. 080
ISSN 1703-0404
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Resear ch Paper
Economic Analysis (EA) Research Paper Series
Measuring the Economic Output of the
Education Sector in the National Accounts
by
Wulong Gu and Ambrose Wong
11F0027M No. 080
ISSN 1703-0404
ISBN 978-1-100-21307-1
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Acknowledgement
The authors thank Isabelle Amano, Dan Boothby, John Baldwin, Winnie Chan, Gang Liu,
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in the 2010 International Association for Research in Income and Wealth conference for their
feedback. They would also like to thank Karim Moussaly for putting together data on the number
of publications from the Canadian Bibliometric Database that is used a measure of research
output of the Canadian universities.
Economic Analysis Research Paper Series - 5 - Statistics Canada – Catalogue no.11F0027M, no. 080
Table of contents
Abstract ..................................................................................................................................... 6
Executive summary .................................................................................................................. 7
1 Introduction ......................................................................................................................... 9
2 Measuring the output of the education sector ................................................................ 10
2.1 Income-based approach to the measurement of education services ........................... 11
2.2 Cost-based approach to the measurement of education services ............................... 12
2.3 Data ............................................................................................................................ 13
2.4 Estimates of the output of the education sector ........................................................... 16
2.5 Comparison with the System of National Accounts ..................................................... 27
3 Accounting for quality changes in education services .................................................. 30
3.1 Education quality, test scores ...................................................................................... 31
3.2 Hedonic regression ..................................................................................................... 34
3.3 Quality-adjusted price and volume indices of education output ................................... 36
4 Conclusion ........................................................................................................................ 37
References .............................................................................................................................. 38
Economic Analysis Research Paper Series - 6 - Statistics Canada – Catalogue no.11F0027M, no. 080
Abstract
This research paper constructs two experimental measures of the economic output of the
education sector for Canada: an income-based measure and a cost-based measure. The
measures differ from the existing measure currently used in the National Accounts, which is
based on the volume of total input, and can be used to examine the productivity performance of
the education sector. Both approaches are predicated on the notion that the output of the
education sector represents investment in human capital. The income-based approach
measures investment in education as increments in the future stream of earnings arising from
education. The cost-based approach measures investment as total expenditures related to
education. The paper finds that the two approaches yield similar estimates of the growth in real
education output, but produce very different estimates of the level of education output. The
paper also proposes and implements a hedonic approach in order to capture the quality of the
output of the education sector.
More studies related to National Economic Accounts and macro-economy and productivity
are available in Update on Economic analysis.
Economic Analysis Research Paper Series - 7 - Statistics Canada – Catalogue no.11F0027M, no. 080
Executive summary
Education is an important economic activity in Canada. However, little is known about the
productivity performance of the education sector, as the output of the education sector has been
measured largely by inputs in Canada.
In the System of National Accounts of Canada and those of most other countries, the volume of
output of the education sector has been measured in the past by the volume of inputs, where
total inputs include labour costs for teachers and administrative staff, capital input, and
intermediate inputs. Since the volume of output is measured by the volume of inputs, the ratio of
output to inputs does not measure productivity performance for that sector. The objective of this
paper is to develop experimental measures of the output of the education sector for Canada that
can be used to examine the productivity performance of this sector, based on the ongoing
development of output-based measure in other Organization for Economic Cooperation and
Development (OECD) countries (Schreyer 2009b, Fraumeni et al. 2008).
This research paper focuses on four questions.
1. What are the approaches used by national statistical agencies to measure the economic
output of the education sector?
The approaches used by national statistical agencies to measure the economic output of the
education sector can be classified into two groups . The first is the income-based approach, or
human capital approach, developed in a series of papers by Jorgenson and Fraumeni (1989,
1992, 1996). The second approach is the cost-based approach, which can be traced back to the
estimates of investment in education based on expenditures that was developed by Kendrick
(1976).
Both approaches start with the number of student enrolments or the number of graduates,
disaggregated by education level, type of education program, age, and gender, as the quantity
measure of education output. The two approaches differ in the weights assigned to, or the unit
prices used to weigh, the different types of enrolments or graduates in order to derive a volume
index of education output.
For the income-based approach, the volume index of education output is calculated as a
weighted sum of student enrolments using weights based on the value of education. The other
is measured by its effect on students’ lifetime labour incomes. The value of education,
measured in terms of its effect on lifetime income, is calculated as the difference between the
lifetime income of an individual enrolled in that education level and the lifetime income of an
individual with a lower education level. For the cost-based approach, the volume index of
education output is calculated as a weighted sum of student enrolments using weights based on
total expenditures per student as the unit price of education. Total expenditures include teacher
salaries, intermediate inputs, and a capital consumption allowance.
2. What are the estimated growth rates of the output of the Canadian education sector that are
derived from the two approaches?
The income-based approach and the cost-based approach are used to estimate the output of
the education sector, which includes primary and secondary education, colleges, and
universities.
The income-based measure of education output is estimated to have increased by 0.8% per
year over the period from 1976 to 2005, while the cost-based estimate increased by 0.6%
during the same period. The difference in the rate of growth between the two estimates can be
attributed to the differences in the level of aggregation for enrolments and the weights used to
Economic Analysis Research Paper Series - 8 - Statistics Canada – Catalogue no.11F0027M, no. 080
aggregate enrolments between the two approaches. For the income-based approach,
enrolments are disaggregated by gender, education level (one of five levels), and age (age 6 to
74). The five education levels are defined as: 0?8 years of schooling; some or completed high
school; some or completed postsecondary school below bachelor’s degree; bachelor’s degree;
and master’s degree or above. For the cost-based approach, enrolments are disaggregated by
three education levels (primary and secondary, college, and university). This disaggregation is
determined by the availability of data on education expenditures.
3. What are the estimates of the nominal value of the output of the Canadian education sector
from the two approaches?
The nominal value of education output from the income-based approach is set equal to the
value of education as measured by its effect on students’ lifetime income. The nominal value of
education output from the cost-based approach is derived from total education expenditures,
which include the labour costs of teachers and administrative staff, capital costs, and
intermediate inputs.
The income-based estimate of the nominal value of education services is found to be much
higher than the cost-based estimate. In 2005, the income-based measure was estimated at
about 6.8 times as large as the cost-based estimate.
There are a number of potential explanations for this difference. First, the coverage of the
education sector differs between the two approaches. The education services sector in the
income-based approach includes the inputs of non-market activities (the opportunity cost of
students’ time), while the cost-based approach does not. Second, the income-based approach
attributes the earnings differentials among individuals to the effect of investment in formal
education (Rosen 1989). To the extent that the earning differential also captures the effect of
on-the-job training, gender discrimination, and individuals’ ability, the income-based approach
overestimates the level of education output.
Despite these differences, the two estimates generate quite similar rates of growth of real or
volume measures.
4. What are the main challenges for measuring the output and the productivity performance of
the education sector?
The measures of the output of the education sector developed in this paper represent an
important first step towards understanding the productivity performance of the education sector.
However, significant challenges remain. Chief among them are the changes in education quality
that must be taken into account in order to accurately estimate the productivity performance of
the education sector. While the hedonic method can be applied in order to take into account the
quality changes in education output as shown in the paper, the data for implementing quality
adjustments are often not available or incomplete. The challenge facing statistical agencies is to
collect time-consistent data on the various indicators of education quality (such as class size,
test scores, and teacher quality) and to conduct surveys that can be used to estimate hedonic
regressions that link the indicators of education quality to the unit price of education output in
terms of the value of education or expenditures of education.
Economic Analysis Research Paper Series - 9 - Statistics Canada – Catalogue no.11F0027M, no. 080
1 Introduction
Education is an important economic activity in Canada. Education, at 15% of consolidated
government expenditures, was the third-largest item, following health (19%) and social services
(30%), in 2009 (Statistics Canada, CANSIM table 385-0001). However, little is known about the
productivity performance of the education sector, as the output of the education sector has been
measured largely by inputs in Canada.
In the National Accounts of Canada and those of most other countries, the volume of output of
the education sector has been measured in the past by the volume of inputs in the education
sector, where total inputs include labour costs for teachers and administrative staff, capital input,
and intermediate inputs. Since the volume of output is measured by the volume of inputs in the
education sector, the ratio of output to inputs does not accurately measure productivity
performance for that sector. The objective of this paper is to develop experimental measures of
the output of the education sector for Canada that can be used to examine productivity
performance in the education sector.
In the last decade, several statistical agencies of countries belonging to the Organization for
Economic Cooperation and Development (OECD) have carried out research to develop output-
based measures of education services and of other non-market service sectors, such as health
services. The research has led to the development of improved methods for the measurement
of education services. By 2006, nine OECD countries had implemented output-based measures
of education services: Australia, Finland, France, Germany, Italy, the Netherlands, New
Zealand, Spain, and the United Kingdom. A number of other OECD countries are expected to
implement the output-based measures for education output (Schreyer 2009b). More recently,
the U.S. Bureau of Economic Analysis has developed experimental output-based measures for
the U.S. primary- and secondary-education sectors (Fraumeni et al. 2008).
Schreyer (2009b) and Fraumeni et al. (2008) define the output of the education sector as the
effect of education on the level of knowledge, skills, and competencies of students. This is also
referred to as investment in human capital (OECD 2010). This characterization of educational
output as investment in human capital dates back to Becker (1964), Mincer (1974), and Schultz
(1961), and is further developed and implemented in a series of papers by Jorgenson and
Fraumeni (1989, 1992, 1996).
According to this definition of education output, the task of measuring education services is
essentially one of measuring investment in human capital. The empirical literature has
developed two competing approaches to measuring the value of investments in human capital.
The first is the income-based approach, or human capital approach, developed in a series of
papers by Jorgenson and Fraumeni (1989, 1992, 1996). The second approach is the cost-
based approach, which can be traced back to the estimates of investment in education based
on expenditures (Kendrick 1976).
Both approaches start with the number of student enrolments or the number of graduates,
disaggregated by education level, type of education program, age, and gender. These are used
to measure the quantity of education output. The two approaches differ in the weights assigned
to, or the unit prices used to weigh, the different types of enrolments or graduates in order to
derive a volume index of education output.
For the income-based approach, the volume index of education output is calculated as a
weighted sum of student enrolments. Weights are based on the value of education which is
measured in terms of its effect on students’ lifetime labour incomes. The value of education in
terms of its effect on lifetime income is calculated as the difference between the lifetime income
of an individual enrolled in that education level and the lifetime income of an individual with a
lower education level. For the cost-based approach, the volume index of education output is
Economic Analysis Research Paper Series - 10 - Statistics Canada – Catalogue no.11F0027M, no. 080
calculated as a weighted sum of student enrolments using weights based on total expenditures
per student. Total expenditures include teacher salaries, intermediate inputs, and a capital
consumption allowance.
The two approaches also produce estimates of the nominal value of education output. The
nominal value of education output that is associated with the income-based approach is set
equal to the value of education measured in terms of its effect on students’ lifetime income. The
nominal value of education output used in the cost-based approach is set equal to total
education expenditures, which include labour costs for teachers and administrative staff, capital
costs, and intermediate inputs. The income-based estimate of the nominal value of education
services is higher than the cost-based estimate. The difference in the nominal value of
education output reflects the difference in the coverage of the education sector in the two
approaches. The education services sector in the income-based approach includes the inputs of
non-market activities (the opportunity cost of students’ time), while the cost-based approach
does not. The difference in the two estimates may be also due to the fact that the income-based
approach attributes all earning differentials to the effect of formal education. Abraham (2010)
provides a comprehensive discussion of the sources of the differences in the estimates of
human capital investment and education output found in the two approaches.
A major challenge with respect to the measurement of education services is to capture changes
in the quality of the education that students receive. There have been numerous attempts to
take into account quality changes in the measure of education output (see Schreyer 2009a and
Abraham 2010 for a review). A contribution of this paper is to recognize that quality adjustment
for education services is similar to the quality adjustment that has been made for the output of
computer technology and other information and communications technologies (ICT) products,
which have benefited from improvements in their quality over time. This paper then proceeds to
present and apply the hedonic technique that has been used elsewhere (i.e., for quality
adjustment to ICT products) in order to adjust the output of the education sector for changes in
quality.
The paper will focus on the education function of the education sector, which includes primary
and secondary education, colleges, and universities. The research output of universities is
estimated by the number of publications. It is then aggregated with university enrolments using
the relative cost shares of teaching vs. research to form the cost-based estimate of university
output. Education also yields benefits beyond increased future streams of earnings for
students, such as making students ‘better’ citizens and ‘better’ parents. However, those benefits
are excluded from the measure of education output in this paper, which focuses on the
economic output.
The rest of the paper is organized as follows. Section 2 presents the cost-based and income-
based estimates of education services for Canada. Section 3 presents estimates of quality-
adjusted education output. Section 4 concludes the paper.
2 Measuring the output of the education sector
This section presents two approaches for measuring the economic output of the education
sector. One, the income-based approach, is based on the future stream of earnings that
education can be expected to provide; the other, the cost-based approach, is based on the
costs of education. The two approaches are described below, in subsections 2.1 and 2.2, and
are used to produce estimates of the output of the Canadian education sector, in subsection
2.4.
Economic Analysis Research Paper Series - 11 - Statistics Canada – Catalogue no.11F0027M, no. 080
2.1 Income-based approach to the measurement of education
services
The income-based approach, or human capital approach, to the measurement of education
services is developed in a series of papers by Jorgenson and Fraumeni (1989, 1992, 1996).
The approach measures the value of education services as the effect of education on an
individual’s lifetime income. As the value of education depends on the student’s age, sex, and
education level, the approach disaggregates students by their age, sex, and education level.
Gu and Wong (2010) estimated the present discounted value of market lifetime labour income
(or the value of human capital) for all individuals aged 15 to 74 in Canada, following the
methodology developed by Jorgenson and Fraumeni (1989, 1992, 1996).
1
In the study, the
estimate is derived by using cross-sectional data. It is assumed that expected incomes in future
periods are equal to the incomes of individuals of the same gender and education, according to
the age that the individuals will have in the future time period, adjusted for increases in real
income. The lifetime incomes can be calculated by a backward recursion, starting with age 74,
which is assumed to be the oldest age before retirement. The expected income for a person of a
given age is that person’s current labour income plus his or her expected lifetime income in the
next period multiplied by survival probabilities. For example, the present value of lifetime income
of 74-year-olds is their current labour income. The lifetime income of 73-year-olds is equal to
their current labour income plus the present value of lifetime income of 74-year-olds, adjusted
for increases in real income.
Let
, ,
t
s e a
h denote the discounted lifetime income (or human capital stock) of individuals of sex s,
educational attainment e, and age a in year t, and
, ,
t
s e a
N denote the number of students of sex s,
and age a who are enrolled in education level e. It is assumed that individuals enroll in school in
order to attain a higher education level?that is, the individuals who are enrolled in education
level e have already achieved education level e-1.
The nominal value of education services (V) is estimated as increments in lifetime incomes
arising from increases in education summed over all students:
( )
, 1, , , , , , , , , ,
, , , ,
(1 ) / (1 ) .
t t m m t t t t
s e a m a a m s e a s e a s e a s e a
s e a s e a
V h g r sr h N I N
+ + +
(
= + + ÷ =
¸ ¸
¿ ¿
(1)
It is assumed that individuals with education level e-1 who are enrolled in school need to spend
an average of m additional years in school in order to achieve higher education level e. g is the
expected growth rate in real income, and r is the discount rate used to calculate the present
value of future lifetime labour income.
, a a m
sr
+
is the probability that an individual aged a will
survive for m more years.
, ,
t
s e a
I is the investment in human capital for a student, and
, ,
t
s e a
N is the
number of students.
The nominal value of education output in Equation (1) can be divided into volume and price
components (Diewert 1976). The volume index of education output (denoted by Q) is an index
number derived through a Tornqvist aggregation of school enrolments. It is calculated as a
weighted sum of student enrolments across different types of students by using as weights the
increment in lifetime labour incomes due to education:
1. Liu (2011) estimated the stock of human capital as the present discounted value of market lifetime income for
selected OECD countries.
Economic Analysis Research Paper Series - 12 - Statistics Canada – Catalogue no.11F0027M, no. 080
1 1
, , , , , ,
, ,
ln ln (ln ln ),
t t t t
s e a s e a s e a
s e a
Q Q v N N
÷ ÷
÷ = ÷
¿
(2)
where
1 1
, , , , , , , ,
, , 1 1
1/ 2 ,
t t t t
s e a s e a s e a s e a
s e a t t t t
I N I N
v
P Q P Q
÷ ÷
÷ ÷
| |
= +
|
|
\ .
v is the share of individuals with s, e, a in the total value of investment in education, averaged
over year t-1 and year t.
The price index of education services (P) is estimated by dividing the nominal value of
education services by the volume index of education services:
.
/
t t t
P V Q = (3)
The estimates of education output and prices in equations (1), (2), and (3) are based on the
number of pupils enrolled at different levels of education. Alternatively, the estimates of
education output can be based on the number of graduates who obtain a particular educational
qualification in a given year and leave the school system.
2
The output of the education sector
based on the number of graduates is estimated as the sum of lifetime incomes embodied in
those graduates. It can be shown that the estimates of education output based on the number of
enrolments are identical to those based on the number of graduates.
In practice, data on enrolments are readily available. In addition, estimates of the education
output for institutions of different levels of education, such as primary education, secondary
education, and postsecondary education, can be derived based on school enrolments. The
estimate based on graduates attaining a particular qualification reflects the sum of the
contribution of all education institutions leading to the qualification. For these reasons, data on
student enrolments are used to estimate education output.
A key assumption of the income-based approach is that the earning differentials among
individuals reflect the effect of investment in formal education (Rosen 1989). To the extent that
the earning differentials also capture the effect of on-the-job training, gender discrimination, and
individuals’ ability, the income-based approach overestimates the level of education output.
In some studies, the output of the education sector arrived at by means of the income-based
approach includes the effect of education on market income and on non-market income
(Jorgenson and Fraumeni 1992). This paper will focus on the output of the education sector as
measured by its effect only on market income. The methodologies for the measurement of non-
market income are less established, and data for such measurement are limited.
2.2 Cost-based approach to the measurement of education services
In contrast to the income-based approach, the cost-based approach measures the output of
education services by using the cost of inputs to education. The approach typically
disaggregates students by education level (elementary, secondary, or postsecondary), since
students enrolled in the various education levels require different amounts of those inputs. In
addition, as discussed by Fraumeni et al. (2008), it may be important to differentiate along the
lines of other student characteristics, such as regular education versus special education or
native English speakers versus non-native English speakers.
2. Fraumeni et al. (2008) provided a brief survey of methodologies used in a number of countries that are based on
either student enrolments or the number of graduates.
Economic Analysis Research Paper Series - 13 - Statistics Canada – Catalogue no.11F0027M, no. 080
The nominal value of education services V arrived at by using the cost-based approach is the
following:
,
t t t
i i
i
V C N =
¿
(4)
where:
t
i
N is the number of students enrolled in a specific education level (primary, secondary,
or postsecondary) or in a specific education program (regular education versus special
education); and
t
i
C is the costs of inputs per student.
Once again, the nominal value of education services can be divided into price and volume
components. The volume index of education services is a weighted sum of student enrolments
across different education levels using the share of the education levels in total input costs as
weights. The price index of education services is the ratio of the nominal value of education
services to the volume index.
A number of OECD countries have implemented this cost-based approach to the measurement
of education services.
3
Schreyer (2009b) recommended the use of the cost-based approach
over the income-based approach, since the cost-based approach is more consistent with the
existing national accounts framework. It maintains the existing boundary of the national
accounts while the income-based approach extends the boundary of national accounts to cover
household activities. Diewert (2008) showed that valuing output at average costs in measuring
output and productivity growth is a second-best option while the best option would be to use
final-demand prices to value output. The use of final-demand prices corresponds to the income-
based approach for the measurement of education output.
The nominal value of education services arrived at by using the income-based approach is
found to be much larger than the nominal value estimated by means of the cost-based approach
(Jorgenson and Fraumeni 1992). Abraham (2010) provided a number of possible explanations
for this difference. The discount rate used to calculate the present value of future lifetime
income may be too low. The costs of time spent by students in studying are not included in the
cost estimates. The earning differences between more educated and less educated individuals
may reflect a host of other factors, such as student ability, family background, and differences in
on-the-job training.
2.3 Data
The data required for estimating education output start with information on enrolment. In
addition, the income-based approach requires data on the impact of education on lifetime labour
income or data on investment in education, and the cost-based approach requires data on
education expenditures at different levels of education.
Data on student enrolments
The data on enrolment are taken from various surveys on student enrolments. From those
surveys, time series data are constructed on the number of pupils enrolled in school, cross-
classified by gender, education level (one of five levels), and age (age 6 to 74). The five
education levels are defined as follows: 0?8 years of schooling; some or completed high school;
some or completed postsecondary school below bachelor’s degree; bachelor’s degree; and
master’s degree or above. The data cover the period from 1972 to 2005. There appears to be a
break in enrolment data for education level 3 (some or completed postsecondary education
3. Fraumeni et al. (2008) and Schreyer (2009b) provided an extensive review of the approaches that a number of
countries have adopted for measuring education services.
Economic Analysis Research Paper Series - 14 - Statistics Canada – Catalogue no.11F0027M, no. 080
below bachelor’s degree) in 1976. The data for the period from 1976 to 2005 are used in this
paper.
The enrolment data for elementary and secondary education are obtained from the Elementary-
Secondary Education Statistics Project (ESESP) for the years after 1997. For 1997 and prior
years, the enrollment data are obtained from the Elementary/Secondary School Enrolment
(ESSE) survey.
The ESESP is an annual survey that collects aggregate data from each provincial/territorial
Ministry or Department of Education. Specifically, the information on enrolments pertains to the
following two streams: regular education; and minority- and second-language education.
Information on regular-education programs is collected by type of program (regular, upgrading,
or professional), education sector (youth or adult), grade, and sex. Information on minority- and
second-language programs is collected by type of program (immersion, as language of
instruction, as a subject taught) and grade.
For 1997 and prior years, the data on enrolment are obtained from the ESSE survey. This
survey collects data on enrolments by type of school (public, private, schools for the visually or
hearing impaired, federal schools, and Department of National Defence schools). The data are
broken down by age and gender and by grade and gender. Data on public schools are provided
to Statistics Canada by the provinces and territories. For private schools, survey methods vary.
Some provinces supply both private and public schools, while, for other provinces, Statistics
Canada surveys institutions directly.
The enrolment statistics for primary and secondary education from the ESESP provide
information on the grades in which students are enrolled (grade 1 to grade 13), but the ESESP
does not have information on the ages of the pupils. The age of pupils is inferred from the fact
that pupils generally start grade 1 at age 6 in Canada. The pupils enrolled in grade 1 are
assumed to be 6 years old; those enrolled in grade 2 are set to be 7 years old; and so forth.
The enrolment data for postsecondary education are obtained from the Postsecondary Student
Information System (PSIS) for 1992 and subsequent years. For the years before 1992, the data
are obtained from three separate surveys: the University Student Information System (USIS);
the Community College Student Information System (CCSIS); and the Trade/Vocational
Enrolment Survey (TVOC).
The PSIS is a national survey that provides detailed information on enrolments and graduates of
Canadian postsecondary education institutions. The PSIS collects information pertaining to the
programs and courses offered at an institution, as well as information regarding the students
themselves and the program(s) and courses in which they were registered or from which they
have graduated.
In the year 2001, the PSIS began to replace the USIS, the CCSIS, and the TVOC with a single
survey offering common variables for all levels of postsecondary education. Historical enrolment
and graduate data from previous surveys have been converted by using PSIS variable
definitions and code sets in order to maintain the historical continuity of the statistical series.
Data on investment in human capital
Data on investment in human capital arising from the education of each student, cross-classified
by gender, education, and age are obtained from Gu and Wong (2010). The human capital
estimate from Gu and Wong (2010) includes all individuals in the Canadian working-age
population aged 15 to 74. For the purpose of this paper, the human capital estimates from Gu
and Wong (2010) are extended to include individuals aged 6 to 14.
Economic Analysis Research Paper Series - 15 - Statistics Canada – Catalogue no.11F0027M, no. 080
To estimate human capital stock for individuals aged 6 to 14, the paper makes the following
assumptions. Individuals aged 6 are assumed to be enrolled in grade 1 and are expected to
complete grade 8 when they are 14 years old. Those individuals are assigned the lifetime
income of individuals aged 15 with education level 1 in 8 years. Individuals aged 7 are assumed
to be enrolled in grade 2 and are expected to complete grade 8 when they are 14 years old.
Those individuals will be assigned the lifetime income of individuals aged 15 with education
level 1 in 7 years. The lifetime labour income of those individuals aged 8 to 14 is estimated in a
similar fashion.
The discounted lifetime labour income for individuals aged 6 to 14 can be estimated as the
following:
( )
15 15
, , , ,15 , ,15
(1 ) / (1 )
t t a a
s e a s e s a
h h g r sr
÷ ÷
= + + , for 6 14 a s s and e = 1, (5)
where:
,15 a
sr is the probability that an individual of sex s and age a will survive to age 15; g is
real income growth; and r is the discount rate used to discount future income.
Investment in education is measured as the increase in the discounted lifetime labour income
resulting from spending an additional year in school. For students enrolled in education level 2
or above, the estimate of investment in education is based on the difference in human capital
stock between individuals enrolled in that education level and individuals enrolled in a lower
education level:
( )
, , , 1, , , ,
(1 ) / (1 )
t t m m t
s e a s e a m a a m s e a
I h g r sr h
+ + +
= + + ÷ , for 2, e > (6)
where m in the equation denotes the number of years that an individual spends in order to
complete the next education level. It is assumed that individuals with 0?8 years of schooling
spend 3 years to complete the next education level (some or completed high school), that
individuals with some or completed high school spend 2 years to obtain some or completed
postsecondary education below bachelor’s degree, that individuals with some or completed
postsecondary education below bachelor’s degree spend 2 years to obtain a bachelor’s degree,
and that individuals with a bachelor’s degree spend at least 2 years to obtain a master’s degree
or above.
4
For students enrolled in education level 1 (0?8 years of schooling), investment in education is
measured as the increase in their lifetime labour income compared with the lifetime labour
income of those individuals who do not have education. But the human capital stock for those
individuals with no education cannot be estimated directly using data from the Census of
Population, as individuals are not coded as having no education in the household surveys or in
the Census.
To estimate investment in education for those pupils enrolled in education level 1 (0?8 years of
schooling), the fact that individuals start grade 1 at age 6 and that primary-level education is
mandatory in Canada is used. For individuals enrolled in grade 8 who are age 14, investment in
human capital is calculated as the difference between the lifetime income of those individuals
and the lifetime income of the individuals of the same age who are enrolled in a lower grade
(grade 7). Since the individuals who are enrolled in grade 7 are all presumed to be 13 years old,
the lifetime income of individuals who are enrolled in grade 7 who are 14 years of age is not
observed. It is assumed that the individuals who are enrolled in grade 7 who are 14 years of
4. The number of years m that is required to obtain an education level depends on students’ ages. The year of
education of younger students within the education level is calculated by inference. It is assumed that older
students are equally distributed among the various years of education in the education level (for details, see Gu
and Wong 2010).
Economic Analysis Research Paper Series - 16 - Statistics Canada – Catalogue no.11F0027M, no. 080
age will achieve the lifetime income of individuals enrolled in grade 7 who are 13 years of age,
with a one-year lag. Investment in human capital for 14-year-olds is estimated as the following:
( )
,1,14 ,1,14 ,1,13 ,13,14
(1 ) / (1 ) .
t t t
s s s s
I h h g r sr = ÷ + + (7)
In general, investment in education for students enrolled in education level 1 who are of age a
( 6 14 a s s ) can be estimated as the following:
( )
,1, ,1, ,1, 1 , 1,
(1 ) / (1 ) .
t t t
s a s a s a s a a
I h h g r sr
÷ ÷
= ÷ + + (8)
Data on expenditures by education level
Student enrolments are disaggregated by education level in order to construct the cost-based
estimates of education services. The cost of education includes labour costs (salaries of
teachers), capital costs, and intermediate inputs.
5
Data are obtained from the Canadian Input-Output Tables for three levels of education: primary
and secondary education, college education, and university education.
Data on the costs of education are not available at individual education levels before 1997. It is
assumed that the relative differences in unit costs across three education levels did not change
for the period before 1997 and are set to be equal to those in year 1997.
2.4 Estimates of the output of the education sector
This section first presents the income-based estimate and the cost-based estimate of the output
of the education sector. It then compares the two estimates.
The income-based estimate of education output
Chart 1 plots trends in school enrolments by education level over the period from 1976 to 2005.
Enrolment in primary and secondary education fell from 1976 to the mid-1980s as the baby
boomers left the primary and secondary education sectors. Enrolment in grades 1?8 then
gradually increased after the mid-1980s and fell again after the mid-1990s as the school-aged
population declined. Enrolment in secondary school (grades 9 to 13) increased after the mid-
1980s and levelled off after the mid-1990s.
5. Capital cost in the education sector is restricted to capital consumption in the National Accounts and does not
include a return to capital.
Economic Analysis Research Paper Series - 17 - Statistics Canada – Catalogue no.11F0027M, no. 080
Chart 1
School enrolment in Canada, by education level
0
500
1,000
1,500
2,000
2,500
3,000
3,500
1976 1980 1984 1988 1992 1996 2000 2004
Grades 0 to 8 High school College or above
thousands
Source: Statistics Canada, authors' calculations.
Chart 2 plots school enrolments by gender over the period from 1976 to 2005. Enrolments
increased faster for women than for men, as a result of large increases in the former’s
participation in colleges and universities over the period. After the mid-1980s, enrolment by
women exceeded enrolment by men. Women now account for more than half of all pupils
enrolled in schools in Canada.
Economic Analysis Research Paper Series - 18 - Statistics Canada – Catalogue no.11F0027M, no. 080
Chart 2
School enrolment in Canada, by gender
2,000
2,300
2,600
2,900
3,200
1976 1980 1984 1988 1992 1996 2000 2004
Male Female
thousands
Source: Statistics Canada, authors' calculations.
Table 1 presents annual growth rates of student enrolments. The most notable increase was
observed for enrolments in colleges and universities: 2.6% per year from 1976 to 2005. While
some of this increase was due to the demographics of the baby boomers, most of the increase
was attributable to increases in participation in college and university education among
Canadians aged 18 to 26 (Emery 2004).
Table 1
Annual growth in school enrolment in Canada, 1976 to 2005
Characteristic 1976 to 2005 1976 to 1986 1986 to 1996 1996 to 2005
Total 0.4 -0.6 1.1 0.6
Male 0.2 -0.8 1.1 0.4
Female 0.5 -0.3 1.2 0.7
Grades 0 to 8 -0.3 -1.7 1.2 -0.3
High school 0.0 -1.4 1.0 0.5
College or above 2.6 4.1 1.0 2.6
percent
Source: Statistics Canada, authors' calculations.
Table 2 presents the income-based estimates of investment in education in current dollars for
the period from 1976 to 2005. The nominal value of education services in Canada, as measured
by the impact of education on the lifetime labour income of students, is large. In 2005,
investment in education was estimated at $469.9 billion, representing about 34% of gross
domestic product (GDP) in Canada for that year.
Economic Analysis Research Paper Series - 19 - Statistics Canada – Catalogue no.11F0027M, no. 080
Table 2
Nominal investment in education in Canada, by gender and education level,
1976 to 2005
Year Total Male Female Grades 0 to 8 High school College or
above
1976 187.4 102.1 85.2 46.7 94.5 46.2
1977 196.7 107.7 89.0 47.6 101.1 47.9
1978 196.9 108.1 88.8 47.9 99.3 49.7
1979 197.4 110.5 86.9 49.0 98.5 49.9
1980 205.8 111.6 94.3 51.7 103.4 50.6
1981 242.5 130.4 112.1 60.8 118.7 63.1
1982 264.2 139.2 125.0 64.4 124.1 75.6
1983 251.4 131.2 120.2 64.8 106.4 80.2
1984 266.8 145.8 121.0 68.9 110.5 87.4
1985 262.1 145.5 116.6 72.4 103.1 86.6
1986 281.4 151.0 130.4 74.0 113.1 94.3
1987 302.6 160.5 142.1 81.5 124.4 96.8
1988 301.6 158.1 143.5 87.3 118.9 95.4
1989 335.9 183.1 152.7 94.7 135.7 105.4
1990 440.9 242.4 198.5 109.1 173.5 158.3
1991 461.9 245.0 216.9 116.1 166.9 178.8
1992 443.0 235.4 207.6 117.0 165.4 160.6
1993 408.8 228.2 180.6 115.0 150.9 142.9
1994 399.2 217.6 181.7 113.3 145.9 140.0
1995 416.4 217.5 198.9 115.9 153.8 146.7
1996 407.6 224.4 183.2 118.0 145.4 144.3
1997 410.5 230.4 180.1 124.7 143.8 142.0
1998 415.7 232.7 183.0 128.1 142.4 145.1
1999 423.8 234.3 189.6 131.2 147.7 145.0
2000 445.4 238.0 207.4 132.7 160.9 151.8
2001 454.6 241.0 213.6 138.3 153.7 162.6
2002 476.9 265.9 211.0 138.7 171.7 166.5
2003 483.6 259.9 223.7 136.7 178.0 168.9
2004 472.7 246.9 225.8 140.9 152.4 179.4
2005 469.9 251.6 218.4 144.8 145.4 179.8
billions of current dollars
Source: Statistics Canada, authors' calculations.
The nominal value of education services is divided into price and quantity components in tables
3, 4, and 5. The quantity index of education output (weighted sum of enrolments) is estimated to
have increased at an average rate of 0.8% per year for the period from 1976 to 2005, while
unweighted enrolments increased at an average rate of 0.4% per year over the period. The
difference between the weighted and unweighted measures reflects the rising enrolments in
secondary and postsecondary education over the period.
Economic Analysis Research Paper Series - 20 - Statistics Canada – Catalogue no.11F0027M, no. 080
Table 3
Real investment in education in Canada, by gender and education level,
1976 to 2005
Year Total Male Female Grades
0 to 8
High school College or
above
1976 368.7 221.2 149.7 143.5 147.5 83.4
1977 366.4 219.6 148.8 139.1 146.9 84.5
1978 364.4 216.5 149.7 133.8 145.6 87.5
1979 361.2 213.3 149.5 129.7 143.9 89.2
1980 361.4 213.3 149.7 127.1 142.9 92.5
1981 365.4 215.2 151.7 129.5 141.1 97.2
1982 371.0 218.7 153.9 128.3 140.5 104.4
1983 391.3 225.1 166.7 126.9 141.7 123.2
1984 390.6 224.2 166.8 125.8 138.2 127.4
1985 392.5 223.7 169.1 124.7 138.2 130.1
1986 391.4 221.0 170.5 120.0 141.2 129.7
1987 404.7 227.8 177.0 125.6 146.6 132.2
1988 410.2 229.8 180.3 127.1 147.9 134.9
1989 413.5 231.5 181.9 129.5 147.5 136.6
1990 418.2 234.3 183.8 131.4 146.6 140.7
1991 439.4 247.2 192.1 132.5 155.7 150.7
1992 446.1 252.8 193.5 133.5 163.5 148.9
1993 448.6 254.6 194.3 133.9 166.7 147.9
1994 446.2 252.8 193.6 134.2 164.9 147.0
1995 450.0 253.9 196.1 135.3 166.7 147.9
1996 442.2 250.5 191.8 136.1 160.6 145.6
1997 453.3 256.7 196.8 139.5 167.1 147.2
1998 455.2 256.9 198.5 138.9 169.0 147.9
1999 456.7 257.0 199.9 138.7 171.9 146.9
2000 464.8 260.1 204.7 138.5 171.9 154.9
2001 471.7 263.0 208.7 139.1 172.3 160.6
2002 476.9 265.9 211.0 138.7 171.7 166.5
2003 471.8 264.3 207.5 137.4 159.8 175.1
2004 469.5 262.7 206.8 135.1 157.0 178.7
2005 469.9 262.0 207.8 132.6 158.8 180.1
billions of 2002 dollars
Source: Statistics Canada, authors' calculations.
Table 4
Annual growth in the volume index of investment in education in Canada,
1976 to 2005
Characteristics 1976 to 2005 1976 to 1986 1986 to 1996 1996 to 2005
Total 0.8 0.6 1.2 0.7
Male 0.6 0.0 1.3 0.5
Female 1.1 1.3 1.2 0.9
Grades 0 to 8 -0.3 -1.8 1.3 -0.3
High school 0.3 -0.4 1.3 -0.1
College or above 2.7 4.5 1.2 2.4
percent
Source: Statistics Canada, authors' calculations.
Economic Analysis Research Paper Series - 21 - Statistics Canada – Catalogue no.11F0027M, no. 080
Table 5
Annual growth in the price index of investment in education in Canada,
1976 to 2005
1976 to 2005 1976 to 1986 1986 to 1996 1996 to 2005
Total 2.4 3.5 2.5 0.9
Male 2.6 4.0 2.7 0.8
Female 2.1 3.0 2.2 1.1
Grades 0 to 8 4.3 6.6 3.5 2.6
High school 1.2 2.3 1.2 0.1
College or above 2.1 2.8 3.1 0.1
percent
Source: Statistics Canada, authors' calculations.
The price index of education output rose by an average of 2.4% per year for the period from
1976 to 2005. It increased at a much slower rate after the mid-1990s. It grew at an average
annual rate of 0.9% over the period from 1996 to 2005. The slower growth in the price index of
education for that period reflects slower earnings growth in that period.
The growth rates of the price and volume indices of education output are lower than the growth
rates of the price and volume index of gross domestic product (GDP). Real GDP increased by
2.9% per year over the period from 1976 to 2005. The price index of GDP increased by 3.9%
per year during the period.
The rate of growth in the price of education output accounts for about two-thirds of the rate of
growth of nominal education output. In contrast, the rate of growth of the GDP price index
accounts for a lower portion (60%) of the rate of growth in nominal GDP.
The level of investment in education for men has consistently exceeded that for women, as
shown in Table 2. The difference between the two narrowed around the mid-1980s as a result of
increased enrolments by women over that period. After the mid-1980s, the difference in
investment in education between women and men was virtually unchanged.
The growth rate of investment in education in constant prices was much higher for women than
for men before the mid-1980s; the growth rates for women and for men were similar after the
mid-1980s (as shown in Table 4). This difference in investment in education between men and
women reflects the difference in their enrolment numbers as discussed above. For the period
from 1976 to 1986, investment in education for women increased by 1.3% per year, while
investment in education for men remained unchanged over the period. After the mid-1980s,
investment in education for men grew at a rate similar to that for women.
The real output of the postsecondary education sector (colleges and universities), as measured
by investment in education, increased the most (as shown in Table 4), growing by 2.7% per
year during the period from 1976 to 2005. The output of the primary and secondary education
sector changed little over that period.
Tables 6 and 7 present the underlying data on investment per student in current and constant
dollars that are used to produce the income-based estimates of education output. Those
estimates of real investment per student are also plotted in Charts 3 and 4.
Economic Analysis Research Paper Series - 22 - Statistics Canada – Catalogue no.11F0027M, no. 080
Table 6
Nominal investment in education per student in Canada, by gender and education
level, 1976 to 2005
Year Total Male Female Grades
0 to 8
High school College or
above
1976 33.9 36.0 31.6 14.7 60.2 58.2
1977 36.1 38.7 33.3 15.5 65.1 57.9
1978 36.9 39.8 34.0 16.2 64.5 59.6
1979 37.7 41.5 33.8 17.1 65.3 58.5
1980 39.8 42.5 37.0 18.4 70.7 57.0
1981 46.5 49.2 43.8 21.2 83.7 68.0
1982 50.6 52.4 48.7 22.7 89.0 76.5
1983 47.0 48.4 45.7 23.0 76.3 70.4
1984 50.1 54.1 46.1 24.7 80.5 75.3
1985 49.2 54.2 44.2 26.2 75.1 73.2
1986 53.9 57.8 50.0 27.7 83.2 79.3
1987 56.2 59.6 52.7 29.2 89.8 79.8
1988 55.4 58.4 52.5 30.9 86.2 77.0
1989 60.9 66.8 55.0 32.9 98.0 83.8
1990 78.6 87.0 70.4 37.4 124.0 122.6
1991 80.5 85.8 75.2 39.5 115.9 131.8
1992 76.4 81.3 71.4 39.5 111.5 118.4
1993 70.3 78.6 62.0 38.7 100.3 106.4
1994 68.7 75.1 62.3 38.1 96.8 105.3
1995 71.2 74.7 67.7 38.7 100.9 110.7
1996 69.9 77.2 62.6 39.1 97.0 109.8
1997 69.1 77.8 60.5 40.3 93.9 108.1
1998 69.8 78.6 61.2 41.6 92.0 109.8
1999 70.8 78.9 62.9 42.6 94.6 107.8
2000 74.1 80.1 68.3 43.2 103.6 109.5
2001 74.9 80.4 69.5 44.9 99.3 113.0
2002 78.1 88.2 68.2 45.2 111.1 111.3
2003 78.7 85.9 71.7 45.1 117.1 106.3
2004 76.9 81.7 72.2 47.2 98.7 110.6
2005 76.6 83.5 69.9 49.5 93.0 109.0
thousands of current dollars
Source: Statistics Canada, authors' calculations.
Economic Analysis Research Paper Series - 23 - Statistics Canada – Catalogue no.11F0027M, no. 080
Table 7
Real investment in education per student in Canada, by gender and education
level, 1976 to 2005
Year Total Male Female Grades
0 to 8
High school College or
above
1976 66.7 78.1 55.5 45.3 93.9 105.2
1977 67.2 78.9 55.7 45.2 94.6 102.2
1978 68.3 79.7 57.2 45.2 94.6 104.9
1979 69.0 80.2 58.1 45.1 95.3 104.5
1980 69.9 81.2 58.8 45.1 97.6 104.1
1981 70.1 81.1 59.2 45.2 99.5 104.8
1982 71.0 82.3 60.0 45.2 100.8 105.7
1983 73.2 83.0 63.3 45.1 101.6 108.1
1984 73.4 83.2 63.5 45.1 100.6 109.8
1985 73.7 83.3 64.1 45.1 100.6 110.0
1986 75.0 84.6 65.4 45.0 103.8 109.2
1987 75.1 84.6 65.6 45.0 105.9 109.0
1988 75.3 84.8 65.9 45.0 107.2 108.8
1989 74.9 84.4 65.5 45.0 106.5 108.6
1990 74.6 84.1 65.1 45.0 104.8 109.0
1991 76.6 86.6 66.6 45.0 108.1 111.1
1992 76.9 87.3 66.6 45.1 110.3 109.8
1993 77.1 87.7 66.7 45.1 110.8 110.2
1994 76.8 87.3 66.4 45.1 109.4 110.6
1995 76.9 87.2 66.7 45.1 109.3 111.6
1996 75.8 86.2 65.6 45.1 107.1 110.8
1997 76.3 86.7 66.1 45.1 109.0 112.1
1998 76.5 86.7 66.4 45.1 109.2 112.0
1999 76.3 86.5 66.3 45.1 110.1 109.3
2000 77.4 87.5 67.5 45.1 110.7 111.7
2001 77.7 87.8 67.9 45.2 111.2 111.7
2002 78.1 88.2 68.2 45.2 111.1 111.3
2003 76.8 87.4 66.6 45.3 105.2 110.3
2004 76.4 86.9 66.2 45.3 101.7 110.1
2005 76.6 87.0 66.5 45.3 101.6 109.2
thousands of 2002 dollars
Source: Statistics Canada, authors' calculations.
Investment in education per student in constant prices rose steadily over time for both men and
women (Chart 3). This reflects rising enrolment in secondary and postsecondary education. The
value of investment in education per student in constant dollars was greater for men than for
women. The difference between women and men decreased slowly in the period before 1990.
After 1990, the difference was broadly stable. In 2005, investment in education per student for
women was about three-quarters that for men.
Economic Analysis Research Paper Series - 24 - Statistics Canada – Catalogue no.11F0027M, no. 080
Chart 3
Real investment in education per student in Canada, by gender
0
20
40
60
80
100
1976 1980 1984 1988 1992 1996 2000 2004
Male Female
thousands of 2002 dollars
Source: Statistics Canada, authors' calculations.
The real value of investment in education per student in colleges and universities also increased
over time (Chart 4). In 2005, the real value of investment in education for a student enrolled in
college or university was more than two times that for a student enrolled in primary education.
Chart 4
Real investment in education per student in Canada, by education level
0
20
40
60
80
100
120
1976 1980 1984 1988 1992 1996 2000 2004
Grades 0 to 8 High school College or above
thousands of 2002 dollars
Source: Statistics Canada, authors' calculations.
Economic Analysis Research Paper Series - 25 - Statistics Canada – Catalogue no.11F0027M, no. 080
The cost-based estimate of education output
Table 8 and Chart 5 present the cost-based estimate of the value of education services in
Canada. For comparison, they also present the income-based estimate of the value of
education services.
Table 8
Annual growth in cost-based and income-based estimates of education
services in Canada
Estimates 1976 to 2005 1976 to 1986 1986 to 1996 1996 to 2005
Cost-based
Nominal value 5.8 8.7 5.0 3.5
Quantity index 0.6 0.0 1.1 0.9
Price index 5.2 8.8 4.0 2.6
Income based
Nominal value 3.2 4.2 3.8 1.6
Quantity index 0.8 0.6 1.2 0.7
Price index 2.4 3.6 2.5 0.9
percent
Source: Statistics Canada, authors' calculations.
Chart 5
The income-based and cost-based estimates of the volume index of the
education-sector output in Canada
0.8
0.9
1.0
1.1
1.2
1.3
1.4
1976 1980 1984 1988 1992 1996 2000 2004
Index (1976=1)
Income-weights Cost-weights
Source: Statistics Canada, authors' calculations.
The cost-based and income-based approaches yield similar estimates of the growth rates of the
real education output, particularly after the mid-1980s. The cost-based estimate increased by
0.6% per year over the period from 1976 to 2005, while the income-based estimate rose by
0.8% per year over the period. The income-based approach yields a slightly higher growth rate
of education output. The difference in the rate of growth between the two estimates can be
attributed to the differences in the level of aggregation for enrolments and weights used to
aggregate enrolments between the two approaches. For the income-based approach,
enrolments are disaggregated by gender, education level (one of five levels), and age (age 6 to
Economic Analysis Research Paper Series - 26 - Statistics Canada – Catalogue no.11F0027M, no. 080
74). The five education levels are defined as follows: 0?8 years of schooling; some or
completed high school; some or completed postsecondary school below bachelor’s degree;
bachelor’s degree; and master’s degree or above. For the cost-based approach, enrolments are
disaggregated into three education levels (primary and secondary, college, and university) as a
result of the availability of data on education expenditures.
6
While the two approaches yield similar estimates of the growth in real education output, they
produce very different estimates of the level of education output (Chart 6). The income-based
estimate of the nominal value of education services was about 6.8 times as large as the cost-
based estimate in 2005.
Chart 6
Ratio of income-based to cost-based estimates of the nominal value of
education services in Canada
0
2
4
6
8
10
12
14
16
1976 1980 1984 1988 1992 1996 2000 2004
ratio
Ratio of investment in education to costs of education
Source: Statistics Canada, authors' calculations.
The relative levels of the two estimates of education output in Chart 6 can be interpreted as the
ratio of the economic benefits of education to the costs of education. That ratio declined from
1976 to the mid-1980s. It remained virtually unchanged from the mid-1980s to 2000, and
declined again after 2000. This suggests that the return to education declined from 1976 to the
mid-1980s; it declined again post 2000, following a period of little change from the mid-1980s to
2000. This is consistent with the findings on the trends in the rate of return to education in
Canada (Emery 2004). Emery examined the rate of return to undergraduate university
education for the period from 1960 to 2000 and observed reductions in returns to university
education in the late 1970s and early 1980s; by 1985, the returns to education had resumed the
levels of the 1960s and early 1970s.
6. The difference between weighted and un-weighted school enrolment estimates reflects the compositional shift
between types of students. As the un-weighted school enrolment declined at 0.6% per year from 1976 to 1986,
the composition shift was an increase of 0.6% per year for the cost-based output estimate and it was an increase
of 1.2% per year for the income-based estimate for that period. The larger composition shift in the income-based
estimate reflects the effect of large decline in enrolment in primary education in that period that is captured in the
income-based estimate, but not in the cost-based estimate that does not have primary education as a separate
education category,
Economic Analysis Research Paper Series - 27 - Statistics Canada – Catalogue no.11F0027M, no. 080
The cost-based estimate in Table 8 can be extended to include the research component of the
university sector output. The research output is estimated by the number of publications that
can be obtained from the Canadian Bibliometric Database (Gingras et al., 2008). The estimated
number of publications from that database increased by 3.3% per year over the period 1996 to
2005, while university enrolment increased by 2.6% per year for the same period. The cost-
based estimate of the university output that aggregates research and teaching components
using the relative cost shares of teaching and research is estimated to have increased by 2.8%
per year for the 1996 to 2005 period, which was slightly higher than the 2.6% annual growth of
university output estimate that only includes school enrolment.
7
The cost-based estimate of the
output of the total education sector increased by 1.0% per year over the period 1996 to 2005
when university research is included, compared with 0.9% annual growth when university is not
included.
Our evidence suggests that the research component has little effect on the overall growth of
education output, though there are some uncertainties in the consistency in the estimated
number of publications over time. The rest of the paper will therefore focus on the estimate that
excludes university research.
2.5 Comparison with the System of National Accounts
In contrast to the two experimental estimates presented above, the System of National
Accounts also produces an estimate of the education sector output that is based mostly on
inputs. The nominal value of education output is the sum of labour compensation, intermediate
inputs, and capital consumption allowance. The volume of education output is equal to the
volume of total inputs used for primary and secondary education and for college education. For
university education, the volume of education output was measured in the past by the volume of
total inputs; it is measured by student enrolments for more recent years.
The existing national accounts input-based estimate of education output is compared with the
income-based estimate and the cost-based estimate of education output in Chart 7. The results
show that the two new estimates of the volume of education output increased at a slower rate
than the current national accounts estimate of education output. The national accounts estimate
of education output increased by 1.2% per year over the period from 1976 to 2005, while the
income-based estimate and the cost-based estimate rose by 0.8% and 0.6%, respectively. The
nominal value of education output estimated from the cost-based approach and the nominal
value of education output estimated from the existing national accounts are both equal to the
sum of labour costs, capital consumption allowance, and intermediate inputs in the education
sector. The growth in the nominal value of education output from the cost-based approach and
from the existing national accounts is much faster than the growth from the income-based
approach (5.8% per year versus 3.2% per year).
7. Allen (1998) breaks down total costs of universities in British Columbia between different functions. He finds that
67% of the total costs in academic year 1989/90 is linked to teaching, the remainder 33% is attributed to research
and services. The cost shares are used for aggregating reach and teaching components of the university output.
Economic Analysis Research Paper Series - 28 - Statistics Canada – Catalogue no.11F0027M, no. 080
Chart 7
Annual growth rates of education output in Canada, 1976 to 2005
0 1 2 3 4 5 6 7
Nominal value
Quantity index
Price index
percent
System of National Accounts estimate Income-based Cost-based
Source: Statistics Canada, authors' calculations.
Chart 8 presents the underlying data on the cost of education per student that are used to
produce cost-based estimates of education output. The unit cost was the highest for university
education, the lowest for primary and secondary education, and in between for college
education. The unit cost increased for university education and for primary and secondary
education from 1997 to 2005, while it changed little for college education during this period.
Economic Analysis Research Paper Series - 29 - Statistics Canada – Catalogue no.11F0027M, no. 080
Chart 8
Cost of education per student in Canada
0
5
10
15
20
1997 1999 2001 2003 2005
Primary and secondary College Univesity
thousands
Source: Statistics Canada, authors' calculations.
Some of the differences in expenditures per student between university education and other
types of education are due to the presence of a research function in universities. As the exact
split in total expenditures between teaching and research is not available, all expenditures are
included in the cost-based measure of education output used here.
8
Chart 9 plots trends in labour productivity of the Canadian education sector based on the three
alternative measures of education output (two output-based measures of education services
and one input-based measure of education services). All three measures of labour productivity
show that labour productivity declined in the Canadian education sector before 1990 and
increased after 1990. Labour productivity based on income-based estimates of education output
declined at an average annual rate of 1.6% in the education sector for the period from 1976 to
1990. During the period from 1990 to 2005, labour productivity increased by 0.4% per year.
8. A more detailed cost-based measure of university education output would distinguish between different types of
programs (such business programs, science and engineering programs, and arts programs), since education
expenditures are different across those programs. For primary and secondary education, more detail would
require a distinction between special programs and regular programs, since expenditures for special education are
much higher.
Economic Analysis Research Paper Series - 30 - Statistics Canada – Catalogue no.11F0027M, no. 080
Chart 9
Labour productivity of the education sector in Canada
0
20
40
60
80
100
120
1976 1980 1984 1988 1992 1996 2000 2004
Index (1976=100)
Income-weights Cost-weights Input-based
Source: Statistics Canada, authors' calculations.
The decline in labour productivity before 1990 reflects the high growth in the number of teachers
in that period. Total hours worked in the education sector increased by 2.5% per year before
1990 while the number of students barely increased during that period. After 1990, the growth in
total hours worked in the education sector was slow, while the number of students increased at
a faster pace. For that period, labour productivity growth increased by half of one percentage
point per year.
3 Accounting for quality changes in education services
A significant challenge for measuring the output of the education sector arises when it comes to
adjusting for changes in the quality of education services over time. To the extent that the
income and cost estimates of the volume of education output do not capture quality
improvements, the changes in real education output will be underestimated and price changes
will be overestimated.
The weighted sum of student enrolments across different categories (classified by education
level, gender, and age) is a correct measure of the volume of education output when students
within each category are homogeneous and comparable over time. When students within each
group are heterogeneous and their characteristics change over time, the weighted sum of
student enrolments is no longer a correct measure of education output. Students taught in
smaller classes by more experienced teachers require an upward adjustment of the volume of
education services and a downward adjustment of their price. Similar adjustments must be
made for students with higher scores who graduate rather than drop out.
The human capital approach, or income-based approach, for the measurement of education
output has been suggested as being an approach to quality-adjusting education output. As
discussed above, the human capital approach is best viewed as an alternative to the cost-based
approach for measuring education output. The two approaches differ in the prices used to value
education services. The cost-based approach values education services by using expenditures
Economic Analysis Research Paper Series - 31 - Statistics Canada – Catalogue no.11F0027M, no. 080
per student, while the income-based approach values education services by using increments in
lifetime labour income from increases in education.
The purpose of quality adjustment is to isolate pure price changes from price changes due to
changes in characteristics of students (Schreyer 2009a). To the extent that education
expenditures and the increments in lifetime income due to education reflect improvements in
education quality, they should be counted as increases in the volume of education output rather
than as increases in the price of education output.
Quality adjustment is not new in the National Accounts. Quality adjustment has been made for
the output of computers and telecommunication equipment in Canada, and other countries. To
construct a quality-constant price index for computers, semiconductors, and
telecommunications equipment, previous studies have used hedonic methods. Triplet (2006)
has provided an extensive survey of the research on the construction of hedonic price indices
for computers and other information and communication products.
The two components of data used to estimate the volume and price indices of education output
are the price and quantity data associated with student enrolments, disaggregated by education
level, gender, and age. The quantity component is the number of students or the number of
student hours. The corresponding price component is increments in lifetime income due to
education, per student, for the income-based approach; it is unit expenditures for the cost-based
approach.
Diewert (2011) and Schreyer (2009a) discussed the hedonic method that can be used to take
into account quality changes in the output of the education sector. The hedonic method has two
steps. First, data are collected on various factors that may affect the quality of the education that
students receive. These factors can include the quality and quantity of inputs to student
education (class size or the number of experienced teachers) and the outcomes of education
(test scores).
The next step is to estimate a hedonic function that relates the indicators of education quality to
the price component of education output, which is investment in education per student for the
income-based approach and education expenditures per student for the cost-based approach.
The coefficients on the indicators of education quality are also known as the implicit prices of
the indicators of education quality (Triplet 2006). This second step is often ignored in previous
empirical studies. Rather, the coefficients that relate the indicators of education quality to
education output are assumed in those studies.
Once the indicators of education quality are collected and implicit prices associated with those
indicators are estimated from hedonic regressions, changes in the price index of education
output that can be attributed to the changes in education quality can be estimated. The imputed
changes in the price index of education output resulting from changes in education quality are
then included in the change in the quality-adjusted volume index of education output.
The rest of the paper will focus on hedonic quality adjustment for the volume and price indices
of education output from the income-based approach. Nevertheless, the same approach can be
used for quality adjustment with respect to the measures of education output from the cost-
based approach.
3.1 Education quality, test scores
For this paper, test scores are used as an indicator of education quality. Specifically, time-series
data on test scores in literacy and related cognitive skills for the individuals that obtained a
specific qualification in different years are used as an indicator of education quality. The time
series data on test scores are constructed from the Canadian data from the 2003 International
Economic Analysis Research Paper Series - 32 - Statistics Canada – Catalogue no.11F0027M, no. 080
Adult Literacy and Skills Survey (2003 IALSS), a seven-country initiative conducted in 2003 that
measured prose and document literacy as well as numeracy and problem-solving skills
(Statistics Canada and OECD 2005).
9
The 2003 IALSS includes standard questions on demographics, labour force status, and
earnings, but it also attempts to measure literacy and related cognitive skills in four broad areas:
prose literacy, document literacy, numeracy, and problem solving. Test scores in those four
broad areas of literacy and cognitive skills will be used to capture the quality of education.
Hanushek and Zhang (2006) also used the literacy scores from the 2003 IALSS to measure the
quality of education.
The "prose literacy" questions in the surveys assess skills ranging from identifying
recommended dosages of aspirin from the instructions on an aspirin bottle to using an
announcement from a personnel department in order to answer a question set out in phrasing
different from that used in the text. The "document literacy" questions, which are intended to
assess capabilities to locate and use information in various forms, range from identifying
percentages in categories in a pictorial graph to assessing an average price by combining
several pieces of information. The "numeracy" component ranges from simple addition of pieces
of information on an order form to calculating the percentage of calories from fat in a Big Mac
from figures provided in a table. The "problem-solving" component assesses goal-directed
thinking and action in situations for which no routine solutions exist.
The 2003 IALSS asks respondents about their age at the time of the survey (2003) and the age
at which they completed their highest level of education. The information is then used to infer
the year when respondents completed the highest level of education. The average test scores
for individuals who completed an education level in a given year is used as indicators of
education quality at the education level in that year.
Individuals may lose and gain skills as a result of the aging process and on-the-job training,
respectively. On the one hand, if individuals tend to lose skills over time as a result of aging,
exam scores for early cohorts of graduates will underestimate the quality of education for those
cohorts. On the other hand, if individuals tend to gain skills over time as a result of on-the-job
training, exam scores for early cohorts will overestimate the quality of education for those
cohorts. The effect of aging and on-the-job training on the text scores for various cohorts of
graduates is controlled for in regression analysis in order to provide an unbiased estimate of
changes in education quality.
Literacy scores of cohorts of graduates may also reflect the effect of student ability and family
background in addition to the effect of education.To control for the effect of student ability,the
following three dummy variables from the 2003 IALSS are included in the regression for literacy
scores (Green and Riddell 2007). A dummy variable equals 1 if the respondent agreed or
strongly agreed with the statement that he or she got good grades in math while in school; a
dummy variable equals 1 if the respondent agreed or strongly agreed with the statement that
teachers often went too fast and he or she often got lost; and a dummy variable equals 1 if the
respondent answered that he or she received remedial help or attended special classes to
assist him or her with reading at school. To control for the effect of family background on test
scores, variables on parental education and immigrant status are added.
Since the objective of this study is to examine the education sector in Canada, anyone born
outside of Canada or educated outside of Canada is excluded from the sample. The over-
sampled First Nations observations from the 2003 IALSS are also dropped. The survey covers
individuals over age 16, but individuals who list their main activity as student are excluded, in
order to highlight the effect of completed schooling and what happens to literacy and skills once
9. The OECD Program for International Student Assessment (PISA) survey provides alternative data source for
estimating changes in education quality over time.
Economic Analysis Research Paper Series - 33 - Statistics Canada – Catalogue no.11F0027M, no. 080
individuals have completed their schooling. Those individuals who completed the highest level
of education before 1976 are excluded, since the focus of the paper is on the changes in the
education quality for the period after 1976 in this paper.
The method that is used to obtain time series data on test scores for various cohorts of
graduates from IALSS 2003 is similar to the one used by Coulombe et al. (2004) in their study
on the long-term relationship between human capital and economic growth.
In summary, to estimate the test scores for the cohorts of graduates at each education level, the
following regression on literacy scores is estimated using the Canadian data in the 2003 IALSS:
2 3 4 5
1 2 3 4 5
ln( ) 2 3 4 5
( * 1 ) ( * 2 ) ( * 3 ) ( * 4 ) ( * 5 )
+ Z .
it it it it it
it it it it it
it it
score E E E E
t E t E t E t E t E
o
o o o o o
| | | | |
¸ c
= + + + +
+ + + + +
+
(9)
The dependent variable is the literacy scores of the individual i who achieved the highest level
of education in year t, where the literacy score is an average score in four broad areas of
literacy and related cognitive skills: prose literacy, document literacy, numeracy, and problem
solving. The variables E1 to E5 are the dummy variables indicating the highest level of
education that the individual achieved. For example, E1 is set equal to 1 if the highest level of
education for that individual is level 1 (0?8 years of schooling). t is the year in which the
individual completed the highest level of education, and is set equal to 1 for the year 1976, 2 for
the year 1977, and so forth. The vector Z is the set of control variables, including gender, age,
age squared, proxies for student abilities, and variables for family background.
The estimated coefficients
1
? to
5
? measure the percent change in the literacy scores of
graduates at each education level over time and will be used to capture the change in the
quality of education services at each education level.
The equation is estimated using the weighted least square approach that uses population size
as weights. The regression results are presented in Table 9: for instance, the coefficient on the
variable time x 0 to 8 years of schooling shows the change in the literacy scores for the
individuals who obtained 0 to 8 years of schooling. The results show that test scores increased
over time for graduates at education levels 1 (primary education) and 2 (secondary education).
However, no statistically significant changes in test scores are observed for graduates at the
postsecondary education (education levels 3 to 5). Literacy scores increased by 1% per year at
the primary education level and increased by 0.2% per year at the secondary-education level.
Economic Analysis Research Paper Series - 34 - Statistics Canada – Catalogue no.11F0027M, no. 080
Table 9
Regression results for the log of literacy scores in Canada
Variable
coefficient t-stat coefficient t-stat coefficient t-stat
Constant 5.3040 106.75 5.1631 63.97 5.0467 43.36
Some or completed high school 0.3118 6.24 0.4170 5.11 0.4259 3.91
Post-secondary education below
bachelor's 0.3774 7.55 0.5110 6.27 0.5273 4.85
Bachelor's degree 0.4426 8.86 0.5657 6.95 0.5665 5.21
Master's degree and above 0.4872 9.69 0.6077 7.35 0.6168 5.66
Time × 0 to 8 years of schooling ... ... 0.0086 2.24 0.0099 1.93
Time × some or completed high school ... ... 0.0021 3.42 0.0017 1.75
Time × post-secondary education below
bachelor's ... ... 0.0005 0.70 -0.0008 -1.07
Time × bachelor's degree ... ... 0.0011 1.76 -0.0006 -0.78
Time × master's degree or above ... ... 0.0012 1.35 -0.0008 -1.09
Female ... ... ... ... -0.0102 -1.74
Age ... ... ... ... 0.0080 4.44
Age squared ... ... ... ... -0.0001 -5.82
Good math grades ... ... ... ... 0.0473 8.20
Teachers too fast ... ... ... ... -0.0258 -2.01
Reading difficulties ... ... ... ... -0.0637 -5.21
Mother post-secondary education ... ... ... ... 0.0360 5.69
Father post-secondary education ... ... ... ... 0.0338 5.74
Mother Canadian ... ... ... ... -0.0143 -1.37
Father Canadian ... ... ... ... 0.0051 0.53
Model 3 Model 1 Model 2
Source: Statistics Canada, authors' calculations.
The results for the effects of the student-ability and family-background variables on literacy
scores are consistent with those in Green and Riddell (2007). Student ability and parental
education levels both have positive effects on literacy scores. The immigration status of parents
does not appear to have a significant effect on literacy scores. Controlling for the effect of
student ability and of family background does not lead to a significant difference in the estimated
changes in education quality.
3.2 Hedonic regression
Canadian data from the 2003 IALSS are used to estimate the hedonic function for education
output that relates test scores to increments in lifetime incomes. Ideally, it would be prefereable
to construct increments in lifetime incomes for all individuals in the sample and to estimate a
hedonic function that relates test scores to gains in lifetime income. In this paper, marginal gains
in current labour income from education (or returns to education) are used as a proxy for gains
in lifetime labour incomes.
The hedonic regression for the output of education services is estimated as a standard Mincer-
type human capital earnings function:
( ) ( )
( ) ( )
2 3
4 5
5
ln( ) ln( ) 2 ln( ) 3
ln( ) 4 ln( ) 5
+ Z .
it it it it it
it it it it
it it
earnings score A score A
score A score A
o
o o | o |
o | o |
¸ c
= + + + +
+ + + +
+
(10)
The earnings are annual earnings. The dummy variables A2 to A5 are the dummy variables that
represent the levels of education achieved. It is assumed that the individuals who achieved a
higher education level also received the lower level. For an individual whose highest level of
Economic Analysis Research Paper Series - 35 - Statistics Canada – Catalogue no.11F0027M, no. 080
education is level 5, dummy variables A2 to A5 are all set equal to 1. For an individual whose
highest level of education is level 4, dummy variables A2 to A4 are all set equal to 1, and
dummy variable A5 is set equal to 0. The vector Z is the set of control variables including
gender, age, age squared, and proxies for student abilities. The variables for family background
are excluded in the estimation, since the variables are found to have no effect on individuals’
earnings.
The coefficients on the variables A2 to A5 represent the marginal wage gains of achieving that
education level over the previous level of education. The estimated marginal gains are used as
a proxy for investment in education at that level. In the regression, those marginal gains are
allowed to change with test scores. The coefficient ? on the log of literacy scores represents
the implicit prices associated with literacy scores. It is assumed that a 1% increase in test
scores will have the same percentage-point contribution to the marginal gains of achieving an
education level, since are no statistically significant differences are found in that coefficient
between the five levels of education used for this paper. In general, coefficient ? will vary
across education levels.
The sample used for estimating the hedonic regression is similar to the one used for estimating
literacy scores, except that those individuals who are self-employed are eliminated for the
hedonic regression. Those individuals whose annual earnings are less than $2,000 or over
$1,000,000 are eliminated from the sample. The latter restriction eliminates retired individuals,
the unemployed, and others who are not in the labour force. It also cuts out a small number of
individuals with earnings that are substantial outliers relative to the rest of the sample. Self-
employed workers are also dropped from the sample in order that the remuneration of skills in
the labour market be examined, since self-employment earnings reflect both remuneration and
returns to capital.
The parameter estimates from the hedonic regression are presented in Table 10. The estimated
? is 0.57 and is statistically significant. This suggests that a 1% increase in test scores is
associated with a 0.57% increase in marginal gains from achieving a higher level of education.
Table 10
Hedonic regression results for the price of education output in
Canada
Parameters
estimates t-statistic
Intercept (alpha
0
) 8.5386 68.90
Some or completed high school (alpha
2
) -2.3987 -6.95
Post-secondary education below bachelor's (alpha
3
) -2.8526 -8.49
Bachelor's degree (alpha
4
) -2.9765 -8.74
Master's degree and above (alpha
5
) -3.1603 -8.81
Implicit prices associated with literacy scores (beta) 0.5657 9.74
Female (gamma
0
) -0.3227 -10.99
Experience (gamma
1
) 0.0930 19.69
Experience squared (gamma
2
) -0.0019 -14.53
Good math grades (gamma
3
) 0.0948 2.82
Teachers too fast (gamma
4
) -0.0812 -1.29
Reading difficulties (gamma
5
) -0.0829 -1.46
Regression results
Source: Statistics Canada, authors' calculations.
Economic Analysis Research Paper Series - 36 - Statistics Canada – Catalogue no.11F0027M, no. 080
3.3 Quality-adjusted price and volume indices of education output
The results from estimating the literary score and earnings regressions can be used to estimate
the quality-adjusted price and volume indices of education output. The estimated literacy score
equation provides an estimate of average literacy scores for individuals who achieved education
level e in year t ( )
t
e
score . The earnings regression provides an estimate of the effect of literacy
scores on returns to education ( ? ). The quality-adjusted price index for student enrolments
disaggregated by sex, education level, and age is estimated as follows:
, , , ,
/ ( ),
t t
s e a s e a
adjI I hedonic quality adjustment = (11)
where ( ) ( ) .
t
e
hedonic quality adjustment score
|
=
Those quality-adjusted price indices are then aggregated to obtain the quality-adjusted price
index of education services by means of Tornqvist aggregation. The quality-adjusted quantity
index of education services is calculated by dividing the nominal value of education output by
the quality-adjusted price index.
Table 11 presents the quality-adjusted output of the education sector. The quality adjustment
raised the growth of education output by 0.2 percentage points per year and lowered the growth
of the corresponding price index by 0.2 percentage points per year. The 0.2-percentage-point
quality-adjustment factor for Canada is similar to the 0.25% quality-adjustment factor per year
that is utilized in the U.K. official estimates of the volume index of education services (see
Fraumeni et al. 2008).
Table 11
Annual growth in the quality-adjusted education output in Canada determined
by means of the income-based approach
Estimates 1976 to 2005 1976 to 1986 1986 to 1996 1996 to 2005
Without quality adjustment
Volume index 0.8 0.6 1.2 0.7
Price index 2.4 3.5 2.5 0.9
With quality adjustment
Volume index 1.0 0.8 1.4 0.9
Price index 2.2 3.3 2.3 0.7
percent
Source: Statistics Canada, authors' calculations.
Economic Analysis Research Paper Series - 37 - Statistics Canada – Catalogue no.11F0027M, no. 080
4 Conclusion
Several statistical agencies of OECD countries have carried out research to develop output-
based measures of education services and of other non-market service sectors, such as health
services, over the last decade. The various approaches can be classified into two broad groups.
The first is the income-based approach, or human capital approach, developed in a series of
papers by Jorgenson and Fraumeni (1989, 1992, 1996). The second approach is the cost-
based approach, which can be traced back to the estimates of investment in education based
on expenditures put forward by Kendrick (1976).
This paper uses both approaches to estimate the output of the Canadian education sector. It
finds that the two approaches yield similar estimates of the growth in education output. Over the
period from 1976 to 2005, the income-based measure of the real output of the education sector
in Canada is estimated to have increased by 0.8% per year, while the cost-based estimate rose
by an estimated 0.6% per year.
However, the two approaches produce very different estimates of the level of education output.
In 2005, the income-based estimate of the nominal education output was about 6.8 times as
large as the cost-based estimate of the education output. There are a number of potential
explanations for this difference. First, the coverage of the education sector between the two
approaches differs. The education services sector in the income-based approach includes the
inputs of non-market activities (the opportunity cost of students’ time), while the cost-based
approach does not. Second, the income-based approach attributes the earning differentials
among individuals to the effect of investment in formal education (Rosen 1989). To the extent
that the earning differential also captures the effect of on-the-job training, gender discrimination,
and individuals’ ability, the income-based approach overestimates the level of education output.
The paper also makes a methodological contribution to the measurement of education output.
While previous studies have attempted to capture quality changes in education output, they
have often lacked precise methodologies to do so. This paper points out that quality adjustment
for education output is no different from quality adjustment for computer output. The hedonic
methods that are used to construct a quality-constant price index for computers can also be
used to capture quality improvement in education output.
The paper finds that the hedonic adjustment for quality changes in education services raised the
growth of education output by 0.2 percentage points per year over the period from 1976 to
2005.
While the appropriate approach for this type of adjustment should be the hedonic methods that
have been used by statistical agencies for quality adjustment with respect to products such as
computer output, the data for implementing such methods are often not available or incomplete.
Both time-consistent data on the various indicators of education quality (such as class size, test
scores, and teacher qualities) and surveys that can be used to estimate hedonic regressions
that link the indicators of education quality to the price of education output are needed for better
hedonic estimates.
Economic Analysis Research Paper Series - 38 - Statistics Canada – Catalogue no.11F0027M, no. 080
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Allen, R.C. 1998. Paying for University Education in B.C. Vancouver, B.C. Department of
Economics. University of British Columbia. Discussion Paper no 98-07.
Becker, G.S. 1964. Human Capital, 2
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