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系统参数辨识的信息准则及算法 英文pdf电子书版本下载

系统参数辨识的信息准则及算法  英文
  • 陈霸东,朱煜,胡金春,乔斯·C.普伦斯派(JoseC.Principe)著 著
  • 出版社: 北京:清华大学出版社
  • ISBN:9787302359418
  • 出版时间:2014
  • 标注页数:249页
  • 文件大小:65MB
  • 文件页数:263页
  • 主题词:参数分析-英文

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图书目录

1 Introduction 1

1.1 Elements of System Identification 1

1.2 Traditional Identification Criteria 3

1.3 Information Theoretic Criteria 4

1.3.1 MEE Criteria 6

1.3.2 Minimum Information Divergence Criteria 7

1.3.3 Mutual Information-Based Criteria 7

1.4 Organization of This Book 8

Appendix A:Unifying Framework of ITL 9

2 Information Measures 13

2.1 Entropy 13

2.2 Mutual Information 19

2.3 Information Divergence 21

2.4 Fisher Information 23

2.5 Information Rate 24

Appendix B:α-Stable Distribution 26

Appendix C:Proof of(2.17) 26

Appendix D:Proof of Cramer-Rao Inequality 27

3 Information Theoretic Parameter Estimation 29

3.1 Traditional Methods for Parameter Estimation 29

3.1.1 Classical Estimation 29

3.1.2 Bayes Estimation 31

3.2 Information Theoretic Approaches to Classical Estimation 34

3.2.1 Entropy Matching Method 34

3.2.2 Maximum Entropy Method 35

3.2.3 Minimum Divergence Estimation 37

3.3 Information Theoretic Approaches to Bayes Estimation 40

3.3.1 Minimum Error Entropy Estimation 40

3.3.2 MC Estimation 51

3.4 Information Criteria for Model Selection 56

Appendix E:EM Algorithm 57

Appendix F:Minimum MSE Estimation 58

Appendix G:Derivation of AIC Criterion 58

4 System Identification Under Minimum Error Entropy Criteria 61

4.1 Brief Sketch of System Parameter Identification 61

4.1.1 Model Structure 62

4.1.2 Criterion Function 65

4.1.3 Identification Algorithm 65

4.2 MEE Identification Criterion 72

4.2.1 Common Approaches to Entropy Estimation 73

4.2.2 Empirical Error Entropies Based on KDE 76

4.3 Identification Algorithms Under MEE Criterion 82

4.3.1 Nonparametric Information Gradient Algorithms 82

4.3.2 Parametric IG Algorithms 86

4.3.3 Fixed-Point Minimum Error Entropy Algorithm 91

4.3.4 Kernel Minimum Error Entropy Algorithm 93

4.3.5 Simulation Examples 95

4.4 Convergence Analysis 104

4.4.1 Convergence Analysis Based on Approximate Linearization 104

4.4.2 Energy Conservation Relation 106

4.4.3 Mean Square Convergence Analysis Based on Energy Conservation Relation 111

4.5 Optimization of φ-Entropy Criterion 122

4.6 Survival Information Potential Criterion 129

4.6.1 Definition of SIP 129

4.6.2 Properties of the SIP 131

4.6.3 Empirical SIP 136

4.6.4 Application to System Identification 139

4.7 △-Entropy Criterion 143

4.7.1 Definition of △-Entropy 145

4.7.2 Some Properties of the △-Entropy 148

4.7.3 Estimation of △-Entropy 152

4.7.4 Application to System Identification 157

4.8 System Identification with MCC 161

Appendix H:Vector Gradient and Matrix Gradient 164

5 System Identification Under Information Divergence Criteria 167

5.1 Parameter Identifiability Under KLID Criterion 167

5.1.1 Definitions and Assumptions 168

5.1.2 Relations with Fisher Information 169

5.1.3 Gaussian Process Case 173

5.1.4 Markov Process Case 176

5.1.5 Asymptotic KLID-Identifiability 180

5.2 Minimum Information Divergence Identification with Reference PDF 186

5.2.1 Some Properties 188

5.2.2 Identification Algorithm 196

5.2.3 Simulation Examples 198

5.2.4 Adaptive Infinite Impulsive Response Filter with Euclidean Distance Criterion 201

6 System Identification Based on Mutual Information Criteria 205

6.1 System Identification Under the MinMI Criterion 205

6.1.1 Properties of MinMI Criterion 207

6.1.2 Relationship with Independent Component Analysis 211

6.1 3 ICA-Based Stochastic Gradient Identification Algorithm 212

6.1.4 Numerical Simulation Example 214

6.2 System Identification Under the MaxMI Criterion 216

6.2.1 Properties of the MaxMI Criterion 217

6.2.2 Stochastic Mutual Information Gradient Identification Algorithm 222

6.2.3 Double-Criterion Identification Method 227

Appendix I:MinMI Rate Criterion 238

References 239

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