An Information-Theoretic Approach to Neural Computing / Edition 1

An Information-Theoretic Approach to Neural Computing / Edition 1

ISBN-10:
0387946667
ISBN-13:
9780387946665
Pub. Date:
02/08/1996
Publisher:
Springer New York
ISBN-10:
0387946667
ISBN-13:
9780387946665
Pub. Date:
02/08/1996
Publisher:
Springer New York
An Information-Theoretic Approach to Neural Computing / Edition 1

An Information-Theoretic Approach to Neural Computing / Edition 1

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Overview

Neural networks provide a powerful new technology to model and control nonlinear and complex systems. In this book, the authors present a detailed formulation of neural networks from the information-theoretic viewpoint. They show how this perspective provides new insights into the design theory of neural networks. In particular they show how these methods may be applied to the topics of supervised and unsupervised learning including feature extraction, linear and non-linear independent component analysis, and Boltzmann machines. Readers are assumed to have a basic understanding of neural networks, but all the relevant concepts from information theory are carefully introduced and explained. Consequently, readers from several different scientific disciplines, notably cognitive scientists, engineers, physicists, statisticians, and computer scientists, will find this to be a very valuable introduction to this topic.

Product Details

ISBN-13: 9780387946665
Publisher: Springer New York
Publication date: 02/08/1996
Series: Perspectives in Neural Computing
Edition description: 1996
Pages: 262
Product dimensions: 6.10(w) x 9.25(h) x 0.03(d)

Table of Contents

1 Introduction.- 2 Preliminaries of Information Theory and Neural Networks.- 2.1 Elements of Information Theory.- 2.2 Elements of the Theory of Neural Networks.- I: Unsupervised Learning.- 3 Linear Feature Extraction: Infomax Principle.- 4 Independent Component Analysis: General Formulation and Linear Case.- 5 Nonlinear Feature Extraction: Boolean Shastic Networks.- 6 Nonlinear Feature Extraction: Deterministic Neural Networks.- II: Supervised Learning.- 7 Supervised Learning and Statistical Estimation.- 8 Statistical Physics Theory of Supervised Learning and Generalization.- 9 Composite Networks.- 10 Information Theory Based Regularizing Methods.- References.
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