19 Sep DATA MINING
BUSINESS INTELLIGENCE AND ANALYTICS
RAMESH SHARDA
DURSUN DELEN
EFRAIM TURBAN
TENTH EDITION
.•
TENTH EDITION
BUSINESS INTELLIGENCE
AND ANALYTICS:
SYSTEMS FOR DECISION SUPPORT
Ramesh Sharda
Oklahoma State University
Dursun Delen
Oklahoma State University
Efraim Turban
University of Hawaii
With contributions by
J.E.Aronson
Tbe University of Georgia
Ting-Peng Liang
National Sun Yat-sen University
David King
]DA Software Group, Inc.
PEARSON
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Library of Congress Cataloging-in-Publication Data
Turban, Efraim. [Decision support and expert system,) Business intelligence and analytics: systems for decision support/Ramesh Sharda, Oklahoma State University,
Dursun Delen, Oklahoma State University, Efraim Turban, University of Hawaii; With contributions by J. E. Aronson, The University of Georgia, Ting-Peng Liang, National Sun Yat-sen University, David King, JOA Software Group, Inc.-Tenth edition.
pages cm ISBN-13: 978-0-13-305090-5 ISBN-10: 0-13-305090-4 1. Management-Data processing. 2. Decision support systems. 3. Expert systems (Computer science)
4. Business intelligence. I. Title. HD30.2.T87 2014 658.4’03801 l-dc23
10 9 8 7 6 5 4 3 2 1
PEARSON
2013028826
ISBN 10: 0-13-305090-4 ISBN 13: 978-0-13-305090-5
BRIEF CONTENTS
Preface xxi
About the Authors xxix
PART I Decision Making and Analytics: An Overview 1 Chapter 1 An Overview of Business Intelligence, Analytics,
and Decision Support 2
Chapter 2 Foundations and Technologies for Decision Making 37
PART II Descriptive Analytics 77
Chapter 3 Data Warehousing 78
Chapter 4 Business Reporting, Visual Analytics, and Business Performance Management 135
PART Ill Predictive Analytics 185
Chapter 5 Data Mining 186
Chapter 6 Techniques for Predictive Modeling 243
Chapter 7 Text Analytics, Text Mining, and Sentiment Analysis 288
Chapter 8 Web Analytics, Web Mining, and Social Analytics 338
PART IV Prescriptive Analytics 391
Chapter 9 Model-Based Decision Making: Optimization and Multi- Criteria Systems 392
Chapter 10 Modeling and Analysis: Heuristic Search Methods and Simulation 435
Chapter 11 Automated Decision Systems and Expert Systems 469
Chapter 12 Knowledge Management and Collaborative Systems 507
PART V Big Data and Future Directions for Business Analytics 541
Chapter 13 Big Data and Analytics 542
Chapter 14 Business Analytics: Emerging Trends and Future Impacts 592
Glossary 634
Index 648
iii
iv
CONTENTS
Preface xxi
About the Authors xxix
Part I Decision Making and Analytics: An Overview 1
Chapter 1 An Overview of Business Intelligence, Analytics, and Decision Support 2
1.1 Opening Vignette: Magpie Sensing Employs Analytics to Manage a Vaccine Supply Chain Effectively and Safely 3
1.2 Changing Business Environments and Computerized Decision Support 5
The Business Pressures-Responses-Support Model 5
1.3 Managerial Decision Making 7
The Nature of Managers’ Work 7
The Decision-Making Process 8
1.4 Information Systems Support for Decision Making 9
1.5 An Early Framework for Computerized Decision Support 11
The Gorry and Scott-Morton Classical Framework 11
Computer Support for Structured Decisions 12
Computer Support for Unstructured Decisions 13
Computer Support for Semistructured Problems 13
1.6 The Concept of Decision Support Systems (DSS) 13
DSS as an Umbrella Term 13
Evolution of DSS into Business Intelligence 14
1.7 A Framework for Business Intelligence (Bl) 14
Definitions of Bl 14
A Brief History of Bl 14
The Architecture of Bl 15
Styles of Bl 15
The Origins and Drivers of Bl 16
A Multimedia Exercise in Business Intelligence 16 ~ APPLICATION CASE 1.1 Sabre Helps Its Clients Through Dashboards
and Analytics 17
The DSS-BI Connection 18
1.8 Business Analytics Overview 19
Descriptive Analytics 20
~ APPLICATION CASE 1.2 Eliminating Inefficiencies at Seattle Children’s Hospital 21
~ APPLICATION CASE 1.3 Analysis at the Speed of Thought 22
Predictive Analytics 22
~ APPLICATION CASE 1.4 Moneybal/: Analytics in Sports and Movies 23
~ APPLICATION CASE 1.5 Analyzing Athletic Injuries 24
Prescriptive Analytics 24
~ APPLICATION CASE 1.6 Industrial and Commercial Bank of China (ICBC) Employs Models to Reconfigure Its Branch Network 25
Analytics Applied to Different Domains 26
Analytics or Data Science? 26
1.9 Brief Introduction to Big Data Analytics 27
What Is Big Data? 27 ~ APPLICATION CASE 1.7 Gilt Groupe’s Flash Sales Streamlined by Big
Data Analytics 29
1.10 Plan of the Book 29 Part I: Business Analytics: An Overview 29
Part II: Descriptive Analytics 30
Part Ill: Predictive Analytics 30
Part IV: Prescriptive Analytics 31
Part V: Big Data and Future Directions for Business Analytics 31
1.11 Resources, Links, and the Teradata University Network Connection 31
Resources and Links 31
Vendors, Products, and Demos 31
Periodicals 31
The Teradata University Network Connection 32
The Book’s Web Site 32 Chapter Highlights 32 • Key Terms 33
Questions for Discussion 33 • Exercises 33
~ END-OF-CHAPTER APPLICATION CASE Nationwide Insurance Used Bl to Enhance Customer Service 34
References 35
Chapter 2 Foundations and Technologies for Decision Making 37 2.1 Opening Vignette: Decision Modeling at HP Using
Spreadsheets 38
2.2 Decision Making: Introduction and Definitions 40
Characteristics of Decision Making 40
A Working Definition of Decision Making 41
Decision-Making Disciplines 41
Decision Style and Decision Makers 41
2.3 Phases of the Decision-Making Process 42
2.4 Decision Making: The Intelligence Phase 44 Problem (or Opportunity) Identification 45 ~ APPLICATION CASE 2.1 Making Elevators Go Faster! 45
Problem Classification 46
Problem Decomposition 46
Problem Ownership 46
Conte nts v
vi Contents
2.5 Decision Making: The Design Phase 47 Models 47
Mathematical (Quantitative) Models 47
The Benefits of Models 4 7
Selection of a Principle of Choice 48
Normative Models 49
Suboptimization 49
Descriptive Models 50
Good Enough, or Satisficing 51
Developing (Generating) Alternatives 52
Measuring Outcomes 53
Risk 53
Scenarios 54
Possible Scenarios 54
Errors in Decision Making 54
2.6 Decision Making: The Choice Phase 55 2.7 Decision Making: The Implementation Phase 55
2.8 How Decisions Are Supported 56 Support for the Intelligence Phase 56
Support for the Design Phase 5 7
Support for the Choice Phase 58
Support for the Implementation Phase 58
2.9 Decision Support Systems: Capabilities 59
A DSS Application 59
2.10 DSS Classifications 61
The AIS SIGDSS Classification for DSS 61
Other DSS Categories 63
Custom-Made Systems Versus Ready-Made Systems 63
2.11 Components of Decision Support Systems 64
The Data Management Subsystem 65
The Model Management Subsystem 65 ~ APPLICATION CASE 2.2 Station Casinos Wins by Building Customer
Relationships Using Its Data 66
~ APPLICATION CASE 2.3 SNAP DSS Helps OneNet Make Telecommunications Rate Decisions 68
The User Interface Subsystem 68
The Knowledge-Based Management Subsystem 69 ~ APPLICATION CASE 2.4 From a Game Winner to a Doctor! 70
Chapter Highlights 72 • Key Terms 73
Questions for Discussion 73 • Exercises 74
~ END-OF-CHAPTER APPLICATION CASE Logistics Optimization in a Major Shipping Company (CSAV) 74
References 75
Part II Descriptive Analytics 77
Chapter 3 Data Warehousing 78 3.1 Opening Vignette: Isle of Capri Casinos Is Winning with
Enterprise Data Warehouse 79
3.2 Data Warehousing Definitions and Concepts 81
What Is a Data Warehouse? 81
A Historical Perspective to Data Warehousing 81
Characteristics of Data Warehousing 83
Data Marts 84
Operational Data Stores 84
Enterprise Data Warehouses (EDW) 85
Metadata 85 ~ APPLICATION CASE 3.1 A Better Data Plan: Well-Established TELCOs
Leverage Data Warehousing and Analytics to Stay on Top in a Competitive Industry 85
3.3 Data Warehousing Process Overview 87 ~ APPLICATION CASE 3.2 Data Warehousing Helps MultiCare Save
More Lives 88
3.4 Data Warehousing Architectures 90
Alternative Data Warehousing Architectures 93
Which Architecture Is the Best? 96
3.5 Data Integration and the Extraction, Transformation, and Load (ETL) Processes 97
Data Integration 98 ~ APPLICATION CASE 3.3 BP Lubricants Achieves BIGS Success 98
Extraction, Transfonnation, and Load 100
3.6 Data Warehouse Development 102 ~ APPLICATION CASE 3.4 Things Go Better with Coke’s Data
Warehouse 103
Data Warehouse Development Approaches 103 ~ APPLICATION CASE 3.5 Starwood Hotels & Resorts Manages Hotel
Profitability with Data Warehousing 106
Additional Data Warehouse Development Considerations 107
Representation of Data in Data Warehouse 108
Analysis of Data in the Data Warehouse 109
OLAP Versus OLTP 110
OLAP Operations 11 0
3.7 Data Warehousing Implementation Issues 113 ~ APPLICATION CASE 3.6 EDW Helps Connect State Agencies in
Michigan 115
Massive Data Warehouses and Scalability 116
3.8 Real-Time Data Warehousing 117 ~ APPLICATION CASE 3.7 Egg Pie Fries the Competition in Near Real
Time 118
Conte nts vii
viii Contents
3.9 Data Warehouse Administration, Security Issues, and Future Trends 121
The Future of Data Warehousing 123
3.10 Resources, Links, and the Teradata University Network Connection 126
Resources and Links 126
Cases 126
Vendors, Products, and Demos 127
Periodicals 127
Additional References 127
The Teradata University Network (TUN) Connection 127
Chapter Highlights 128 • Key Terms 128
Questions for Discussion 128 • Exercises 129
…. END-OF-CHAPTER APPLICATION CASE Continental Airlines Flies High with Its Real-Time Data Warehouse 131
References 132
Chapter 4 Business Reporting, Visual Analytics, and Business Performance Management 135
4.1 Opening Vignette:Self-Service Reporting Environment Saves Millions for Corporate Customers 136
4.2 Business Reporting Definitions and Concepts 139
What Is a Business Report? 140 ..,. APPLICATION CASE 4.1 Delta Lloyd Group Ensures Accuracy and
Efficiency in Financial Reporting 141
Components of the Business Reporting System 143
…. APPLICATION CASE 4.2 Flood of Paper Ends at FEMA 144
4.3 Data and Information Visualization 145 ..,. APPLICATION CASE 4.3 Tableau Saves Blastrac Thousands of Dollars
with Simplified Information Sharing 146
A Brief History of Data Visualization 147 …. APPLICATION CASE 4.4 TIBCO Spotfire Provides Dana-Farber Cancer
Institute with Unprecedented Insight into Cancer Vaccine Clinical Trials 149
4.4 Different Types of Charts and Graphs 150
Basic Charts and Graphs 150
Specialized Charts and Graphs 151
4.5 The Emergence of Data Visualization and Visual Analytics 154
Visual Analytics 156
High-Powered Visual Analytics Environments 158
4.6 Performance Dashboards 160 …. APPLICATION CASE 4.5 Dallas Cowboys Score Big with Tableau and
Teknion 161
Dashboard Design 162
~ APPLICATION CASE 4.6 Saudi Telecom Company Excels with Information Visualization 163
What to Look For in a Dashboard 164
Best Practices in Dashboard Design 165
Benchmark Key Performance Indicators with Industry Standards 165
Wrap the Dashboard Metrics with Contextual Metadata 165
Validate the Dashboard Design by a Usability Specialist 165
Prioritize and Rank Alerts/Exceptions Streamed to the Dashboard 165
Enrich Dashboard with Business Users’ Comments 165
Present Information in Three Different Levels 166
Pick the Right Visual Construct Using Dashboard Design Principles 166
Provide for Guided Analytics 166
4.7 Business Performance Management 166
Closed-Loop BPM Cycle 167
~ APPLICATION CASE 4.7 IBM Cognos Express Helps Mace for Faster and Better Business Reporting 169
4.8 Performance Measurement 170
Key Performance Indicator (KPI) 171
Performance Measurement System 172
4.9 Balanced Scorecards 172
The Four Perspectives 173
The Meaning of Balance in BSC 17 4
Dashboards Versus Scorecards 174
4.10 Six Sigma as a Performance Measurement System 175
The DMAIC Performance Model 176
Balanced Scorecard Versus Six Sigma 176
Effective Performance Measurement 1 77
~ APPLICATION CASE 4.8 Expedia.com’s Customer Satisfaction Scorecard 178
Chapter Highlights 179 • Key Terms 180
Questions for Discussion 181 • Exercises 181
~ END-OF-CHAPTER APPLICATION CASE Smart Business Reporting Helps Healthcare Providers Deliver Better Care 182
References 184
Part Ill Predictive Analytics 185
Chapter 5 Data Mining 186 5.1 Opening Vignette: Cabela’s Reels in More Customers with
Advanced Analytics and Data Mining 187
5.2 Data Mining Concepts and Applications 189 ~ APPLICATION CASE 5.1 Smarter Insurance: Infinity P&C Improves
Customer Service and Combats Fraud with Predictive Analytics 191
Conte nts ix
x Contents
Definitions, Characteristics, and Benefits 192 ..,. APPLICATION CASE 5.2 Harnessing Analytics to Combat Crime:
Predictive Analytics Helps Memphis Police Department Pinpoint Crime and Focus Police Resources 196
How Data Mining Works 197 Data Mining Versus Statistics 200
5.3 Data Mining Applications 201 …. APPLICATION CASE 5.3 A Mine on Terrorist Funding 203
5.4 Data Mining Process 204
Step 1: Business Understanding 205
Step 2: Data Understanding 205
Step 3: Data Preparation 206
Step 4: Model Building 208 …. APPLICATION CASE 5.4 Data Mining in Cancer Research 210
Step 5: Testing and Evaluation 211
Step 6: Deployment 211
Other Data Mining Standardized Processes and Methodologies 212
5.5 Data Mining Methods 214
Classification 214
Estimating the True Accuracy of Classification Models 215
Cluster Analysis for Data Mining 220 ..,. APPLICATION CASE 5.5 2degrees Gets a 1275 Percent Boost in Churn
Identification 221
Association Rule Mining 224
5.6 Data Mining Software Tools 228 …. APPLICATION CASE 5.6 Data Mining Goes to Hollywood: Predicting
Financial Success of Movies 231
5.7 Data Mining Privacy Issues, Myths, and Blunders 234
Data Mining and Privacy Issues 234 …. APPLICATION CASE 5.7 Predicting Customer Buying Patterns-The
Target Story 235
Data Mining Myths and Blunders 236 Chapter Highlights 237 • Key Terms 238
Questions for Discussion 238 • Exercises 239
…. END-OF-CHAPTER APPLICATION CASE Macys.com Enhances Its Customers’ Shopping Experience with Analytics 241
References 241
Chapter 6 Techniques for Predictive Modeling 243 6.1 Opening Vignette: Predictive Modeling Helps Better
Understand and Manage Complex Medical Procedures 244
6.2 Basic Concepts of Neural Networks 247 Biological and Artificial Neural Networks 248 ..,. APPLICATION CASE 6.1 Neural Networks Are Helping to Save Lives in
the Mining Industry 250
Elements of ANN 251
Network Information Processing 2 52
Neural Network Architectures 254 ~ APPLICATION CASE 6.2 Predictive Modeling Is Powering the Power
Generators 256
6.3 Developing Neural Network-Based Systems 258
The General ANN Learning Process 259
Backpropagation 260
6.4 Illuminating the Black Box of ANN with Sensitivity Analysis 262 ~ APPLICATION CASE 6.3 Sensitivity Analysis Reveals Injury Severity
Factors in Traffic Accidents 264
6.5 Support Vector Machines 265 ~ APPLICATION CASE 6.4 Managing Student Retention with Predictive
Modeling 266
Mathematical Formulation of SVMs 270
Primal Form 271
Dual Form 271
Soft Margin 271
Nonlinear Classification 272
Kernel Trick 272
6.6 A Process-Based Approach to the Use of SVM 273 Support Vector Machines Versus Artificial Neural Networks 274
6.7 Nearest Neighbor Method for Prediction 275 Similarity Measure: The Distance Metric 276
Parameter Selection 277 ~ APPLICATION CASE 6.5 Efficient Image Recognition and
Categorization with kNN 278
Chapter Highlights 280 • Key Terms 280
Questions for Discussion 281 • Exercises 281
~ END-OF-CHAPTER APPLICATION CASE Coors Improves Beer Flavors with Neural Networks 284
References 285
Chapter 7 Text Analytics, Text Mining, and Sentiment Analysis 288 7.1 Opening Vignette: Machine Versus Men on Jeopardy!: The
Story of Watson 289
7.2 Text Analytics and Text Mining Concepts and Definitions 291 ~ APPLICATION CASE 7.1 Text Mining for Patent Analysis 295
7.3 Natural Language Processing 296 ~ APPLICATION CASE 7.2 Text Mining Improves Hong Kong
Government’s Ability to Anticipate and Address Public Complaints 298
7.4 Text Mining Applications 300
Marketing Applications 301
Security Applications 301 ~ APPLICATION CASE 7.3 Mining for Lies 302
Biomedical Applications 304
Conte nts xi
xii Contents
Academic Applications 305 …. APPLICATION CASE 7.4 Text Mining and Sentiment Analysis Help
Improve Customer Service Performance 306
7.5 Text Mining Process 307
Task 1: Establish the Corpus 308
Task 2: Create the Term-Document Matrix 309
Task 3: Extract the Knowledge 312 ..,. APPLICATION CASE 7.5 Research Literature Survey with Text
Mining 314
7.6 Text Mining Tools 317
Commercial Software Tools 317
Free Software Tools 317 ..,. APPLICATION CASE 7.6 A Potpourri ofText Mining Case Synopses 318
7.7 Sentiment Analysis Overview 319 ..,. APPLICATION CASE 7.7 Whirlpool Achieves Customer Loyalty and
Product Success with Text Analytics 321
7.8 Sentiment Analysis Applications 323
7.9 Sentiment Analysis Process 325
Methods for Polarity Identification 326
Using a Lexicon 327
Using a Collection of Training Documents 328
Identifying Semantic Orientation of Sentences and Phrases 328
Identifying Semantic Orientation of Document 328
7.10 Sentiment Analysis and Speech Analytics 329
How Is It Done? 329 ..,. APPLICATION CASE 7.8 Cutting Through the Confusion: Blue Cross
Blue Shield of North Carolina Uses Nexidia’s Speech Analytics to Ease Member Experience in Healthcare 331
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