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9780470371923

Knowledge Discovery With Support Vector Machines

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  • ISBN13:

    9780470371923

  • ISBN10:

    0470371927

  • Edition: 1st
  • Format: Hardcover
  • Copyright: 2009-08-03
  • Publisher: Wiley-Interscience
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Summary

Support Vector Machines (SVM technology) is one of the most user-friendly learning technologies available. Knowledge Discovery with Support Vector Machines provides an accessible introduction to model building and knowledge discovery with one of the preeminent algorithms. By introducing the reader to the subject material in a well-motivated setting where the technical prerequisites are kept to a minimum, the book presents a gentle tutorial on support vector machines for software engineers, software architects, data miners, bioinformatics specialists, analysts, statisticians, and other practitioners.

Author Biography

Lutz Hamel, PhD, teaches at the University of Rhode Island, where he founded the machine learning and data mining group. His major research interests are computational logic, machine learning, evolutionary computation, data mining, bioinformatics, and computational structures in art?and literature.

Table of Contents

Prefacep. xiii
p. 1
What Is Knowledge Discovery?p. 3
Machine Learningp. 4
Structure of the Universe Xp. 6
Inductive Learningp. 8
Model Representationsp. 9
Exercisesp. 11
Bibliographic Notesp. 11
Knowledge Discovery Environmentsp. 13
Computational Aspects of Knowledge Discoveryp. 13
Data Accessp. 14
Visualizationp. 17
Data Manipulationp. 20
Model Building and Evaluationp. 23
Model Deploymentp. 26
Other Tool Setsp. 27
Exercisesp. 27
Bibliographic Notesp. 28
Describing Data Mathematicallyp. 31
From Data Sets to Vector Spacesp. 31
Vectorsp. 35
Vector Spacesp. 40
The Dot Product as a Similarity Scorep. 41
Lines, Planes, and Hyperplanesp. 44
Exercisesp. 47
Bibliographic Notesp. 48
Linear Decision Surfaces and Functionsp. 49
From Data Sets to Decision Functionsp. 49
Linear Decision Surfaces Through the Originp. 50
Decision Surfaces with an Offset Termp. 51
Simple Learning Algorithmp. 54
Discussionp. 57
Exercisesp. 58
Bibliographic Notesp. 59
Perceptron Learningp. 61
Perceptron Architecture and Trainingp. 62
Dualityp. 67
Discussionp. 70
Exercisesp. 71
Bibliographic Notesp. 72
Maximum-Margin Classifiersp. 73
Optimization Problemsp. 74
Maximum Marginsp. 75
Optimizing the Marginp. 77
Quadratic Programmingp. 82
Discussionp. 86
Exercisesp. 87
Bibliographic Notesp. 88
p. 89
Support Vector Machinesp. 91
The Lagrangian Dualp. 92
Dual Maximum-Margin Optimizationp. 97
The Dual Decision Functionp. 101
Linear Support Vector Machinesp. 102
Nonlinear Support Vector Machinesp. 103
The Kernel Trickp. 106
Feature Searchp. 109
A Closer Look at Kernelsp. 109
Soft-Margin Classifiersp. 114
The Dual Setting for Soft-Margin Classifiersp. 118
Tool Supportp. 122
WEKAp. 123
Rp. 126
Discussionp. 128
Exercisesp. 130
Bibliographic Notesp. 131
Implementationp. 133
Gradient Ascentp. 134
The Kernel-Adatron Algorithmp. 136
Quadratic Programmingp. 138
Chunkingp. 139
Sequential Minimal Optimizationp. 142
Discussionp. 144
Exercisesp. 144
Bibliographic Notesp. 145
Evaluating What Has Been Learnedp. 147
Performance Metricsp. 148
The Confusion Matrixp. 149
Model Evaluationp. 152
The Hold-Out Methodp. 155
The Leave-One-Out Methodp. 157
N-Fold Cross-Validationp. 158
Error Confidence Intervalsp. 160
Comparison of Modelsp. 162
Model Evaluation in Practicep. 163
WEKAp. 163
Rp. 167
Exercisesp. 169
Bibliographic Notesp. 170
Elements Of Statistical Learning Theoryp. 171
The VC-Dimension and Model Complexityp. 172
A Theoretical Setting for Machine Learningp. 175
Empirical Risk Minimizationp. 176
VC-Confidencep. 177
Structural Risk Minimizationp. 179
Discussionp. 180
Exercisesp. 180
Bibliographic Notesp. 181
p. 183
Multiclass Classificationp. 185
One-Versus-the-Rest Classificationp. 185
Pairwise Classificationp. 189
Discussionp. 192
Exercisesp. 192
Bibliographic Notesp. 192
Regression With Support Vector Machinesp. 193
Regression as Machine Learningp. 193
Simple and Multiple Linear Regressionp. 194
Regression with Maximum-Margin Machinesp. 197
Regression with Support Vector Machinesp. 200
Model Evaluationp. 202
Toot Supportp. 203
WEKAp. 204
Rp. 205
Exercisesp. 207
Bibliographic Notesp. 208
Novelty Detectionp. 209
Maximum-Margin Machinesp. 210
The Dual Settingp. 212
Novelty Detection in Rp. 214
Exercisesp. 217
Bibliographic Notesp. 217
Notationp. 219
Tutorial Introduction To Rp. 221
Programming Constructsp. 222
Data Constructsp. 224
Basic Data Analysisp. 227
Bibliographic Notesp. 230
Referencesp. 231
Indexp. 237
Table of Contents provided by Ingram. All Rights Reserved.

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