Data Mining For Business Intelligence

Description
The rapid proliferation of the Internet and related technologies has created an unprecedented opportunity for enterprises to collect massive amounts of data regarding customers and all aspects of their business operations.

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DATA MINING FOR BUSINESS INTELLIGENCE
MIS 382N 9 (Unique 03760), MKT 382 17 (Unique 05055)
T Th 3:30-5:00 p.m. (GSB 3.104)

Instructor: Professor Anitesh Barua
Office: CBA 5.232
Email: [email protected]
Office hours: M W 1:00 – 2:30 p.m. (or by appointment)

Course Overview
The rapid proliferation of the Internet and related technologies has created an unprecedented
opportunity for enterprises to collect massive amounts of data regarding customers and all
aspects of their business operations. Yet the reality is that most organizations today are (i)
“data rich” but “information and knowledge poor”, and (ii) not harnessing the full potential of
their data, which is perhaps the second most important asset after human capital. Internet
based applications such as social media, website usage tracking and online reviews as well as
more traditional technology applications like RFID, Supply Chain Management (SCM), Enterprise
Resource Planning (ERP) and Customer Relationship Management (CRM) provide access to vast
amounts of data regarding customers, suppliers, competitors as well as a firm’s own activities
and business processes. Being able to unlock the insights and knowledge trapped in such raw
data constitutes a key lever for competitive advantage in hypercompetitive business
environments.
This course is designed to showcase the virtually unlimited opportunities that exist today to
leapfrog the competition by leveraging the data that organizations routinely collect every day,
but which they hardly use strategically to make decisions at various points in the value chain.
Students will be exposed to a wide gamut of issues related to data analytics and business
intelligence, including the strategic aspects of big and better data as well as the details of
analytical methods and data mining and visualization tools such as XLMiner and Node XL.

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Learning Objectives
This course is especially valuable to students contemplating careers in business analytics,
marketing, prediction modeling, consulting and general management. Students taking this
course will develop expertise in the following areas:
1. Strategic aspects and business value of data analytics
2. Data capture, validation, reduction, analysis, insights and recommendations
3. Practical analytical and technical skills that differentiates you in any modern enterprise
4. In depth expertise in techniques and methods of classification, prediction, and
association
5. Real world data analytic and business intelligence applications
Students are not required to have a deep knowledge of statistics (though a basic understanding
is necessary) or technical ability in programming languages and software applications. The
content of this course is presented in an intuitive format with emphasis on the connection
between data and business strategies. A key feature of this course is the use of XLMiner (an
Excel add-in) for data mining and NodeXL (an open-source template for Microsoft Excel 2007
and 2010) for the analysis of social media networks.

Course Material

Textbooks
1. "Data Mining for Business Intelligence: Concepts, Techniques, and Applications in
Microsoft Office Excel with XLMiner"
by Galit Shmueli, Nitin R. Patel, Peter C. Bruce
Publisher: Wiley; 2 edition (October 26, 2010)
ISBN-10: 0470526823
ISBN-13: 978-0470526828

2. "Analyzing Social Media Networks with NodeXL: Insights from a Connected World"
by Derek Hansen, Ben Shneiderman and Marc A. Smith
Publisher: Morgan Kaufmann; 1 edition (September 10, 2010)
ISBN-10: 0123822297
ISBN-13: 978-0123822291

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Readings list (course packet available at IT Copy & Printing, 512 W Martin Luther
King J r, Austin, TX 78701, Tel: 512-476-6662)

Articles

1. “Big Data, Analytics and the Path From Insights to Value,” by Steve LaValle, Eric
Lesser, Rebecca Shockley,Michael S. Hopkins, Nina Kruschwitz HBS SMR372-PDF-ENG.
2. “Architecture of Business Intelligence: Aligning a Robust Technical Environment with
Business Strategies,” by Thomas H. Davenport, Jeanne G. Harris, HBS 2202BC-PDF-ENG
3. “A Step-By-Step Guide to Smart Business Experiments,” by Eric T. Anderson, Duncan
Simester, HBS R1103H-PDF-ENG
4. “Embed Analytics in Business Processes: A How-To Guide,” by Thomas H.
Davenport, Jeanne G. Harris, , HBS 5751BC-PDF-ENG

Cases
1. “Business Intelligence Software at SYSCO,” by Andrew McAfee, Alison Berkley
Wagonfeld, HBS 604080-PDF-ENG
2. “Harrah's Entertainment Inc.: Real-Time CRM in a Service Supply Chain,” by Hau
Lee, Seungjin Whang, Kamram Ahsan, Earl Gordon, Amir Faragalla, Asha Jain, Abid
Mohsin, Shi Guangyu, Guangyu Shi, HBS GS50-PDF-ENG
3. “Harrah's Entertainment, Inc.” by Rajiv Lal, Patricia Martone Carrolo, HBS 502011-PDF-
ENG
4. “Netflix Leading with Data: The Emergence of Data-Driven Video,” by Russell
Walker, Mark Jeffery, Linus So, Sripad Sriram, Jon Nathanson, Joao Ferreira, HBS KEL473-
PDF-ENG
5. “Testing, Monitoring, and Adjusting Strategic Objectives Through Data Analytics at
Northwestern Mutual,” by Anne Field, HBS B1107B-PDF-ENG

Grading
Your course grade will be based on the following:
Item Date due Weight
Individual assignments 2/9, 3/1, 3/27, 4/10, 4/26 35%
Group project Final presentation on 5/1 and
5/3
20%
Midterm 3/6 15%
Take home final Handed out May 4, due May 11
by 11:59 p.m.
20%
Class participation 10%
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Class participation: 10%
In this class much of the learning is dependent on the accessing the combined knowledge and
experience of the group. It is everyone’s job to keep the discussion productive and moving forward.
In evaluating your class participation grade, I take the following into consideration:
• useful arguments expressed coherently and succinctly
• good analysis supported by case facts or your own experience
• relevance to previous contributions, i.e. ability to listen and build on what others say
• constructive disagreement
• regard, respect and acknowledgment of others’ contributions
• readiness to contribute to class discussions

Individual Assignments (35%)
There will be 5 individual assignments during the course. The schedule of assignments is as follows:
1. Harrah’s (case study, readings packet): 2/9
2. Charles Book Club (p. 367 of Data Mining textbook): 3/1
3. German Credit (p. 375 of Data Mining textbook): 3/27
4. “Segmenting Consumers of Bath Soap” (p. 383): 4/10
5. “Cosmetics Purchases” (p. 277): 4/26
Group project (20%)
Students will work in groups of five on a semester-long data mining and business intelligence
project dealing with real world data. You will be responsible for forming your own team. Topics
can vary widely depending on student experience and interest, and can include areas such as
healthcare (e.g., factors that drive operating efficiency and quality of care), finance and
financial services (e.g., trading strategies, predicting loan defaults), and electronic commerce
(e.g., online customer acquisition/retention, customization and pricing strategies). Groups are
responsible for initiating contact with organizations or sources of data. Groups will make three
presentations during the semester:
2/21: Groups will present their proposed topics and initial progress.
3/22: Groups will present the status of their projects.
5/1 and 5/3: All student groups should be ready to present on 5/1. Half the groups will be
chosen randomly to present their studies. The remaining groups will present on 5/3.
PowerPoint slides + details of analysis will be submitted by all groups by the beginning of class
on 5/1.
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Course Agenda
Date Topic Readings
1/17 Data mining, business
strategies and value

1. “Big Data, Analytics and the Path From
Insights to Value,” by Steve LaValle, Eric
Lesser, Rebecca Shockley,Michael S.
Hopkins, Nina Kruschwitz
2. “Architecture of Business Intelligence:
Aligning a Robust Technical Environment
with Business Strategies,” by Thomas H.
Davenport, Jeanne G. Harris

1/19 Transforming business
processes and operations
with data analytics
1. “A Step-By-Step Guide to Smart Business
Experiments,” by Eric T. Anderson, Duncan
Simester, HBS R1103H-PDF-ENG
2. “Testing, Monitoring, and Adjusting Strategic
Objectives Through Data Analytics at
Northwestern Mutual,” by Anne Field, HBS
B1107B-PDF-ENG
3. “Embed Analytics in Business Processes: A
How-To Guide,” by Thomas H.
Davenport, Jeanne G. Harris, , HBS 5751BC-
PDF-ENG

1/24 Best practices in data
analytics and business
intelligence
1. “Netflix Leading with Data: The Emergence
of Data-Driven Video,” by Russell
Walker, Mark Jeffery, Linus So, Sripad
Sriram, Jon Nathanson, Joao Ferreira, HBS
KEL473-PDF-ENG
2. “Business Intelligence Software at SYSCO,”
by Andrew McAfee, Alison Berkley
Wagonfeld, HBS 604080-PDF-ENG

1/26 The data mining process 1. Data Mining for Business Intelligence:
Chapters 1, 2

2. Install XLMiner on your computer
1/31 The data mining process Data Mining for Business Intelligence: Chapter 2
2/2 Dimension reduction Data Mining for Business Intelligence: Chapter 4
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2/7 Performance evaluation Data Mining for Business Intelligence: Chapter 5
2/9 Best practices in data
analytics: The case of
Harrah’s

1. Harrahs “Harrah's Entertainment Inc.: Real-
Time CRM in a Service Supply Chain,” by Hau
Lee, Seungjin Whang, Kamram Ahsan, Earl
Gordon, Amir Faragalla, Asha Jain, Abid
Mohsin, Shi Guangyu, Guangyu Shi, HBS
GS50-PDF-ENG

2. “Harrah's Entertainment, Inc.” by Rajiv
Lal, Patricia Martone Carrolo, HBS 502011-
PDF-ENG

Assignment #1 due by the beginning of
class: Harrah’s case studies
2/14 Classification Data Mining for Business Intelligence: Chapters 7, 8
2/16 Classification Data Mining for Business Intelligence: Chapter 9
2/21
Group Project Proposals Student groups will present their topic and
initial progress
2/23 Classification Data Mining for Business Intelligence: Chapter 10
2/28 Neural Networks Data Mining for Business Intelligence: Chapter 11
3/1 Discriminant analysis Data Mining for Business Intelligence: Chapter 12

Assignment #2 due: “Charles Book Club”
3/6
Midterm

3/8 Association rules Data Mining for Business Intelligence: Chapter 13
3/20 Guest speaker TBA
3/22
Project Review Student groups will present their project
status
3/27 Association rules Data Mining for Business Intelligence: Chapter 13

Assignment #3 due: “German Credit”
3/29 Clustering Data Mining for Business Intelligence: Chapter 14

4/3 Visualization of data Data Mining for Business Intelligence: Chapter 3
4/5 Visualization of data Data Mining for Business Intelligence: Chapter 3
4/10 Extracting business
intelligence from social
media
Analyzing Social Media Networks with NodeXL: Ch.
1, 3

Assignment #4 due: “Segmenting
Consumers of Bath Soap”
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4/12 Tools for analyzing social
media networks
Analyzing Social Media Networks with NodeXL:
Chapters 4, 5, 6, 7
4/17 Guest speaker TBA
4/19 Analyzing Twitter Analyzing Social Media Networks with NodeXL,
Chapter 10
4/24 Analyzing Facebook Analyzing Social Media Networks with NodeXL,
Chapter 11
4/26 Review and course summary
Assignment #5 due: “Cosmetics Purchases”
13.3, p. 277 of Data Mining book.
5/1
Project presentations
All student groups should be ready to present on
5/1. Half the groups will be chosen randomly to
present their studies. PowerPoint slides will be
submitted by all groups by the beginning of class.
5/3
Project presentations
Remaining half of the groups will present their
studies.
5/4
Take home final handed
out

5/11
Take home final due by
11:59 p.m.

doc_341323902.pdf
 

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