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9783642025310

Sensitivity Analysis for Neural Networks

by ; ; ;
  • ISBN13:

    9783642025310

  • ISBN10:

    3642025315

  • Edition: 1st
  • Format: Hardcover
  • Copyright: 2010-01-03
  • Publisher: Springer-Verlag New York Inc
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List Price: $149.99

Summary

Artificial neural networks are used to model systems that receive inputs and produce outputs. The relationships between the inputs and outputs and the representation parameters are critical issues in the design of related engineering systems, and sensitivity analysis concerns methods for analyzing these relationships. Perturbations of neural networks are caused by machine imprecision, and they can be simulated by embedding disturbances in the original inputs or connection weights, allowing us to study the characteristics of a function under small perturbations of its parameters. This is the first book to present a systematic description of sensitivity analysis methods for artificial neural networks. It covers sensitivity analysis of multilayer perceptron neural networks and radial basis function neural networks, two widely used models in the machine learning field. The authors examine the applications of such analysis in tasks such as feature selection, sample reduction, and network optimization. The book will be useful for engineers applying neural network sensitivity analysis to solve practical problems, and for researchers interested in foundational problems in neural networks.

Table of Contents

Introduction to Neural Networksp. 1
Properties of Neural Networksp. 3
Neural Network Learningp. 5
Supervised Learningp. 5
Unsupervised Learningp. 5
Perceptronp. 6
Adaline and Least Mean Square Algorithmp. 8
Multilayer Perceptron and Backpropagation Algorithmp. 9
Output Layer Learningp. 11
Hidden Layer Learningp. 11
Radial Basis Function Networksp. 12
Support Vector Machinesp. 13
Principles of Sensitivity Analysisp. 17
Perturbations in Neural Networksp. 17
Neural Network Sensitivity Analysisp. 18
Fundamental Methods of Sensitivity Analysisp. 21
Geometrical Approachp. 21
Statistical Approachp. 23
Summaryp. 24
Hyper-Rectangle Modelp. 25
Hyper-Rectangle Model for Input Space of MLPp. 25
Sensitivity Measure of MLPp. 26
Discussionp. 27
Sensitivity Analysis with Parameterized Activation Functionp. 29
Parameterized Antisymmetric Squashing Functionp. 29
Sensitivity Measurep. 30
Summaryp. 31
Localized Generalization Error Modelp. 33
Introductionp. 33
The Localized Generalization Error Modelp. 35
The Q-Neighborhood and Q-Unionp. 36
The Localized Generalization Error Boundp. 36
Stochastic Sensitivity Measure for RBFNNp. 38
Characteristics of the Error Boundp. 40
Comparing Two Classifiers Using the Error Boundp. 42
Architecture Selection Using the Error Boundp. 42
Parameters for MC2SGp. 44
RBFNN Architecture Selection Algorithm for MC2SGp. 44
A Heuristic Method to Reduce the Computational Time for MC2SGp. 45
Summaryp. 45
Critical Vector Learning for RBF Networksp. 47
Related Workp. 47
Construction of RBF Networks with Sensitivity Analysisp. 48
RBF Classifiers' Sensitivity to the Kernel Function Centersp. 49
Orthogonal Least Square Transformp. 51
Critical Vector Selectionp. 52
Summaryp. 52
Sensitivity Analysis of Prior Knowledgep. 55
KBANNsp. 56
Inductive Biasp. 58
Sensitivity Analysis and Measuresp. 59
Output-Pattern Sensitivityp. 59
Output-Weight Sensitivityp. 60
Output-H Sensitivityp. 61
Euclidean Distancep. 61
Promoter Recognitionp. 61
Data and Initial Domain Theoryp. 62
Experimental Methodologyp. 63
Discussion and Conclusionp. 64
Applicationsp. 69
Input Dimension Reductionp. 69
Sensitivity Matrixp. 70
Criteria for Pruning Inputsp. 70
Network Optimizationp. 71
Selective Learningp. 74
Hardware Robustnessp. 76
Measure of Nonlinearityp. 77
Parameter Tuning for Neocognitronp. 78
Receptive Fieldp. 79
Selectivityp. 80
Sensitivity Analysis of the Neocognitronp. 80
Bibliographyp. 83
Table of Contents provided by Ingram. All Rights Reserved.

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