Description

Book Synopsis
With big data analytics comes big insights into profitability Big data is big business. But having the data and the computational power to process it isn't nearly enough to produce meaningful results.

Trade Review
explains what it covers very well (ZDNet, September 2014)

Table of Contents

Forward xiii

Preface xv

Acknowledgments xix

Introduction 1

Big Data Timeline 5

Why This Topic is Relevant Now 8

Is Big Data a Fad? 9

Where Using Big Data Makes a Big Difference 12

Part One The Computing Environment 23

Chapter 1 Hardware 27

Storage (Disk) 27

Central Processing Unit 29

Memory 31

Network 33

Chapter 2 Distributed Systems 35

Database Computing 36

File System Computing 37

Considerations 39

Chapter 3 Analytical Tools 43

Weka 43

Java and JVM Languages 44

R 47

Python 49

SAS 50

Part Two Turning Data into Business Value 53

Chapter 4 Predictive Modeling 55

A Methodology for Building Models 58

sEMMA 61

Binary Classifi cation 64

Multilevel Classifi cation 66

Interval Prediction 66

Assessment of Predictive Models 67

Chapter 5 Common Predictive Modeling Techniques 71

RFM 72

Regression 75

Generalized Linear Models 84

Neural Networks 90

Decision and Regression Trees 101

Support Vector Machines 107

Bayesian Methods Network Classifi cation 113

Ensemble Methods 124

Chapter 6 Segmentation 127

Cluster Analysis 132

Distance Measures (Metrics) 133

Evaluating Clustering 134

Number of Clusters 135

K‐means Algorithm 137

Hierarchical Clustering 138

Profi ling Clusters 138

Chapter 7 Incremental Response Modeling 141

Building the Response Model 142

Measuring the Incremental Response 143

Chapter 8 Time Series Data Mining 149

Reducing Dimensionality 150

Detecting Patterns 151

Time Series Data Mining in Action: Nike+ FuelBand 154

Chapter 9 Recommendation Systems 163

What Are Recommendation Systems? 163

Where Are They Used? 164

How Do They Work? 165

Assessing Recommendation Quality 170

Recommendations in Action: SAS Library 171

Chapter 10 Text Analytics 175

Information Retrieval 176

Content Categorization 177

Text Mining 178

Text Analytics in Action: Let’s Play Jeopardy! 180

Part Three Success Stories of Putting It All Together 193

Chapter 11 Case Study of a Large U.S.‐Based Financial Services Company 197

Traditional Marketing Campaign Process 198

High‐Performance Marketing Solution 202

Value Proposition for Change 203

Chapter 12 Case Study of a Major Health Care Provider 205

CAHPS 207

HEDIS 207

HOS 208

IRE 208

Chapter 13 Case Study of a Technology Manufacturer 215

Finding Defective Devices 215

How They Reduced Cost 216

Chapter 14 Case Study of Online Brand Management 221

Chapter 15 Case Study of Mobile Application Recommendations 225

Chapter 16 Case Study of a High‐Tech Product Manufacturer 229

Handling the Missing Data 230

Application beyond Manufacturing 231

Chapter 17 Looking to the Future 233

Reproducible Research 234

Privacy with Public Data Sets 234

The Internet of Things 236

Software Development in the Future 237

Future Development of Algorithms 238

In Conclusion 241

About the Author 243

Appendix 245

References 247

Index 253

Big Data Data Mining and Machine Learning

    Product form

    £37.50

    Includes FREE delivery

    RRP £50.00 – you save £12.50 (25%)

    Order before 4pm today for delivery by Fri 3 Jul 2026.

    A Hardback by Jared Dean

      Trusted by thousands of customers. See 2,385+ Customer Reviews

      View other formats and editions of Big Data Data Mining and Machine Learning by Jared Dean

      Publisher: John Wiley & Sons Inc
      Publication Date: 08/08/2014
      ISBN13: 9781118618042, 978-1118618042
      ISBN10: 1118618041

      Description

      Book Synopsis
      With big data analytics comes big insights into profitability Big data is big business. But having the data and the computational power to process it isn't nearly enough to produce meaningful results.

      Trade Review
      explains what it covers very well (ZDNet, September 2014)

      Table of Contents

      Forward xiii

      Preface xv

      Acknowledgments xix

      Introduction 1

      Big Data Timeline 5

      Why This Topic is Relevant Now 8

      Is Big Data a Fad? 9

      Where Using Big Data Makes a Big Difference 12

      Part One The Computing Environment 23

      Chapter 1 Hardware 27

      Storage (Disk) 27

      Central Processing Unit 29

      Memory 31

      Network 33

      Chapter 2 Distributed Systems 35

      Database Computing 36

      File System Computing 37

      Considerations 39

      Chapter 3 Analytical Tools 43

      Weka 43

      Java and JVM Languages 44

      R 47

      Python 49

      SAS 50

      Part Two Turning Data into Business Value 53

      Chapter 4 Predictive Modeling 55

      A Methodology for Building Models 58

      sEMMA 61

      Binary Classifi cation 64

      Multilevel Classifi cation 66

      Interval Prediction 66

      Assessment of Predictive Models 67

      Chapter 5 Common Predictive Modeling Techniques 71

      RFM 72

      Regression 75

      Generalized Linear Models 84

      Neural Networks 90

      Decision and Regression Trees 101

      Support Vector Machines 107

      Bayesian Methods Network Classifi cation 113

      Ensemble Methods 124

      Chapter 6 Segmentation 127

      Cluster Analysis 132

      Distance Measures (Metrics) 133

      Evaluating Clustering 134

      Number of Clusters 135

      K‐means Algorithm 137

      Hierarchical Clustering 138

      Profi ling Clusters 138

      Chapter 7 Incremental Response Modeling 141

      Building the Response Model 142

      Measuring the Incremental Response 143

      Chapter 8 Time Series Data Mining 149

      Reducing Dimensionality 150

      Detecting Patterns 151

      Time Series Data Mining in Action: Nike+ FuelBand 154

      Chapter 9 Recommendation Systems 163

      What Are Recommendation Systems? 163

      Where Are They Used? 164

      How Do They Work? 165

      Assessing Recommendation Quality 170

      Recommendations in Action: SAS Library 171

      Chapter 10 Text Analytics 175

      Information Retrieval 176

      Content Categorization 177

      Text Mining 178

      Text Analytics in Action: Let’s Play Jeopardy! 180

      Part Three Success Stories of Putting It All Together 193

      Chapter 11 Case Study of a Large U.S.‐Based Financial Services Company 197

      Traditional Marketing Campaign Process 198

      High‐Performance Marketing Solution 202

      Value Proposition for Change 203

      Chapter 12 Case Study of a Major Health Care Provider 205

      CAHPS 207

      HEDIS 207

      HOS 208

      IRE 208

      Chapter 13 Case Study of a Technology Manufacturer 215

      Finding Defective Devices 215

      How They Reduced Cost 216

      Chapter 14 Case Study of Online Brand Management 221

      Chapter 15 Case Study of Mobile Application Recommendations 225

      Chapter 16 Case Study of a High‐Tech Product Manufacturer 229

      Handling the Missing Data 230

      Application beyond Manufacturing 231

      Chapter 17 Looking to the Future 233

      Reproducible Research 234

      Privacy with Public Data Sets 234

      The Internet of Things 236

      Software Development in the Future 237

      Future Development of Algorithms 238

      In Conclusion 241

      About the Author 243

      Appendix 245

      References 247

      Index 253

      Recently viewed products

      © 2026 Book Curl

        • American Express
        • Apple Pay
        • Diners Club
        • Discover
        • Google Pay
        • Maestro
        • Mastercard
        • PayPal
        • Shop Pay
        • Union Pay
        • Visa

        Login

        Forgot your password?

        Don't have an account yet?
        Create account