The guide to targeting and leveraging business opportunities
using big data & analytics
By leveraging big data & analytics, businesses create the
potential to better understand, manage, and strategically
exploiting the complex dynamics of customer behavior. Analytics
in a Big Data World reveals how to tap into the powerful tool
of data analytics to create a strategic advantage and identify new
business opportunities. Designed to be an accessible resource, this
essential book does not include exhaustive coverage of all
analytical techniques, instead focusing on analytics techniques
that really provide added value in business environments.
The book draws on author Bart Baesens’ expertise on the topics
of big data, analytics and its applications in e.g. credit risk,
marketing, and fraud to provide a clear roadmap for organizations
that want to use data analytics to their advantage, but need a good
starting point. Baesens has conducted extensive research on big
data, analytics, customer relationship management, web analytics,
fraud detection, and credit risk management, and uses this
experience to bring clarity to a complex topic.
* Includes numerous case studies on risk management, fraud
detection, customer relationship management, and web analytics
* Offers the results of research and the author’s personal
experience in banking, retail, and government
* Contains an overview of the visionary ideas and current
developments on the strategic use of analytics for business
* Covers the topic of data analytics in easy-to-understand terms
without an undo emphasis on mathematics and the minutiae of
statistical analysis
For organizations looking to enhance their capabilities via data
analytics, this resource is the go-to reference for leveraging data
to enhance business capabilities.
Spis treści
Preface xiii
Acknowledgments xv
Chapter 1 Big Data and Analytics 1
Example Applications 2
Basic Nomenclature 4
Analytics Process Model 4
Job Profiles Involved 6
Analytics 7
Analytical Model Requirements 9
Notes 10
Chapter 2 Data Collection, Sampling, and Preprocessing 13
Types of Data Sources 13
Sampling 15
Types of Data Elements 17
Visual Data Exploration and Exploratory Statistical Analysis 17
Missing Values 19
Outlier Detection and Treatment 20
Standardizing Data 24
Categorization 24
Weights of Evidence Coding 28
Variable Selection 29
Segmentation 32
Notes 33
Chapter 3 Predictive Analytics 35
Target Definition 35
Linear Regression 38
Logistic Regression 39
Decision Trees 42
Neural Networks 48
Support Vector Machines 58
Ensemble Methods 64
Multiclass Classification Techniques 67
Evaluating Predictive Models 71
Notes 84
Chapter 4 Descriptive Analytics 87
Association Rules 87
Sequence Rules 94
Segmentation 95
Notes 104
Chapter 5 Survival Analysis 105
Survival Analysis Measurements 106
Kaplan Meier Analysis 109
Parametric Survival Analysis 111
Proportional Hazards Regression 114
Extensions of Survival Analysis Models 116
Evaluating Survival Analysis Models 117
Notes 117
Chapter 6 Social Network Analytics 119
Social Network Definitions 119
Social Network Metrics 121
Social Network Learning 123
Relational Neighbor Classifier 124
Probabilistic Relational Neighbor Classifier 125
Relational Logistic Regression 126
Collective Inferencing 128
Egonets 129
Bigraphs 130
Notes 132
Chapter 7 Analytics: Putting It All to Work 133
Backtesting Analytical Models 134
Benchmarking 146
Data Quality 149
Software 153
Privacy 155
Model Design and Documentation 158
Corporate Governance 159
Notes 159
Chapter 8 Example Applications 161
Credit Risk Modeling 161
Fraud Detection 165
Net Lift Response Modeling 168
Churn Prediction 172
Recommender Systems 176
Web Analytics 185
Social Media Analytics 195
Business Process Analytics 204
Notes 220
About the Author 223
Index 225
O autorze
BART BAESENS is an associate professor at KU Leuven (Belgium) and a lecturer at the University of Southampton (United Kingdom), as well as an internationally known data analytics consultant. He is a foremost researcher in the areas of web analytics, customer relationship management, and fraud detection. His findings have been published in well-known international journals including Machine Learning and Management Science. Baesens is also co-author of the book Credit Risk Management: Basic Concepts (Oxford University Press, 2008).