Detect fraud earlier to mitigate loss and prevent cascading damage

Fraud Analytics Using Descriptive, Predictive, and Social Network Techniques is an authoritative guidebook for setting up a comprehensive fraud detection analytics solution. Early detection is a key factor in mitigating fraud damage, but it involves more specialized techniques than detecting fraud at the more advanced stages. This invaluable guide details both the theory and technical aspects of these techniques, and provides expert insight into streamlining implementation. Coverage includes data gathering, preprocessing, model building, and post-implementation, with comprehensive guidance on various learning techniques and the data types utilized by each. These techniques are effective for fraud detection across industry boundaries, including applications in insurance fraud, credit card fraud, anti-money laundering, healthcare fraud, telecommunications fraud, click fraud, tax evasion, and more, giving you a highly practical framework for fraud prevention.

It is estimated that a typical organization loses about 5% of its revenue to fraud every year. More effective fraud detection is possible, and this book describes the various analytical techniques your organization must implement to put a stop to the revenue leak.

* Examine fraud patterns in historical data

* Utilize labeled, unlabeled, and networked data

* Detect fraud before the damage cascades

* Reduce losses, increase recovery, and tighten security

The longer fraud is allowed to go on, the more harm it causes. It expands exponentially, sending ripples of damage throughout the organization, and becomes more and more complex to track, stop, and reverse. Fraud prevention relies on early and effective fraud detection, enabled by the techniques discussed here. Fraud Analytics Using Descriptive, Predictive, and Social Network Techniques helps you stop fraud in its tracks, and eliminate the opportunities for future occurrence.



Autorentext

BART BAESENS is a full professor at KU Leuven, and a lecturer at the University of Southampton. He has done extensive research on analytics, customer relationship management, web analytics, fraud detection, and credit risk management. He regularly advises and provides consulting support to international firms with respect to their analytics and credit risk management strategy.

VÉRONIQUE VAN VLASSELAER is a PhD researcher in the Department of Decision Sciences and Information Management at KU Leuven. Her research focuses on the develop­ment of new techniques for fraud detection by combining predictive and network analytics.

WOUTER VERBEKE is an assistant professor at Vrije Universiteit Brussel (Brussels, Belgium). His research is situated in the field of predictive analytics and complex network analysis with applications in fraud, marketing, credit risk, human resources management, and mobility.

Zusammenfassung
Detect fraud earlier to mitigate loss and prevent cascading damage

Fraud Analytics Using Descriptive, Predictive, and Social Network Techniques is an authoritative guidebook for setting up a comprehensive fraud detection analytics solution. Early detection is a key factor in mitigating fraud damage, but it involves more specialized techniques than detecting fraud at the more advanced stages. This invaluable guide details both the theory and technical aspects of these techniques, and provides expert insight into streamlining implementation. Coverage includes data gathering, preprocessing, model building, and post-implementation, with comprehensive guidance on various learning techniques and the data types utilized by each. These techniques are effective for fraud detection across industry boundaries, including applications in insurance fraud, credit card fraud, anti-money laundering, healthcare fraud, telecommunications fraud, click fraud, tax evasion, and more, giving you a highly practical framework for fraud prevention.

It is estimated that a typical organization loses about 5% of its revenue to fraud every year. More effective fraud detection is possible, and this book describes the various analytical techniques your organization must implement to put a stop to the revenue leak.

  • Examine fraud patterns in historical data
  • Utilize labeled, unlabeled, and networked data
  • Detect fraud before the damage cascades
  • Reduce losses, increase recovery, and tighten security

The longer fraud is allowed to go on, the more harm it causes. It expands exponentially, sending ripples of damage throughout the organization, and becomes more and more complex to track, stop, and reverse. Fraud prevention relies on early and effective fraud detection, enabled by the techniques discussed here. Fraud Analytics Using Descriptive, Predictive, and Social Network Techniques helps you stop fraud in its tracks, and eliminate the opportunities for future occurrence.



Inhalt

List of Figures xv

Foreword xxiii

Preface xxv

Acknowledgments xxix

Chapter 1 Fraud: Detection, Prevention, and Analytics! 1

Introduction 2

Fraud! 2

Fraud Detection and Prevention 10

Big Data for Fraud Detection 15

Data-Driven Fraud Detection 17

Fraud-Detection Techniques 19

Fraud Cycle 22

The Fraud Analytics Process Model 26

Fraud Data Scientists 30

A Fraud Data Scientist Should Have Solid Quantitative Skills 30

A Fraud Data Scientist Should Be a Good Programmer 31

A Fraud Data Scientist Should Excel in Communication and Visualization Skills 31

A Fraud Data Scientist Should Have a Solid Business Understanding 32

A Fraud Data Scientist Should Be Creative 32

A Scientific Perspective on Fraud 33

References 35

Chapter 2 Data Collection, Sampling, and Preprocessing 37

Introduction 38

Types of Data Sources 38

Merging Data Sources 43

Sampling 45

Types of Data Elements 46

Visual Data Exploration and Exploratory Statistical Analysis 47

Benford's Law 48

Descriptive Statistics 51

Missing Values 52

Outlier Detection and Treatment 53

Red Flags 57

Standardizing Data 59

Categorization 60

Weights of Evidence Coding 63

Variable Selection 65

Principal Components Analysis 68

RIDITs 72

PRIDIT Analysis 73

Segmentation 74

References 75

Chapter 3 Descriptive Analytics for Fraud Detection 77

Introduction 78

Graphical Outlier Detection Procedures 79

Statistical Outlier Detection Procedures 83

Break-Point Analysis 84

Peer-Group Analysis 85

Association Rule Analysis 87

Clustering 89

Introduction 89

Distance Metrics 90

Hierarchical Clustering 94

Example of Hierarchical Clustering Procedures 97

k-Means Clustering 104

Self-Organizing Maps 109

Clustering with Constraints 111

Evaluating and Interpreting Clustering Solutions 114

One-Class SVMs 117

References 118

Chapter 4 Predictive Analytics for Fraud Detection 121

Introduction 122

Target Definition 123

Linear Regression 125

Logistic Regression 127

Basic Concepts 127

Logistic Regression Properties 129

Building a Logistic Regression Scorecard 131

Variable Selection for Linear and Logistic Regression 133

Decision Trees 136

Basic Concepts 136

Splitting Decision 137

Stopping Decision 140

Decision Tree Properties 141

Regression Trees 142

Using Decision Trees in Fraud Analytics 143

Neural Networks 144

Basic Concepts 144

Weight Learning 147

Titel
Fraud Analytics Using Descriptive, Predictive, and Social Network Techniques
Untertitel
A Guide to Data Science for Fraud Detection
EAN
9781119146827
ISBN
978-1-119-14682-7
Format
E-Book (pdf)
Hersteller
Herausgeber
Veröffentlichung
27.07.2015
Digitaler Kopierschutz
Adobe-DRM
Dateigrösse
18.66 MB
Anzahl Seiten
402
Jahr
2015
Untertitel
Englisch