Mathematical Approaches to Neural Networks ( Volume 51 )

Publication series :Volume 51

Author: Taylor   J. G.  

Publisher: Elsevier Science‎

Publication year: 1993

E-ISBN: 9780080887395

P-ISBN(Paperback): 9780444816924

P-ISBN(Hardback):  9780444816924

Subject: TP18 artificial intelligence theory

Language: ENG

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Description

The subject of Neural Networks is being seen to be coming of age, after its initial inception 50 years ago in the seminal work of McCulloch and Pitts. It is proving to be valuable in a wide range of academic disciplines and in important applications in industrial and business tasks. The progress being made in each approach is considerable. Nevertheless, both stand in need of a theoretical framework of explanation to underpin their usage and to allow the progress being made to be put on a firmer footing.

This book aims to strengthen the foundations in its presentation of mathematical approaches to neural networks. It is through these that a suitable explanatory framework is expected to be found. The approaches span a broad range, from single neuron details to numerical analysis, functional analysis and dynamical systems theory. Each of these avenues provides its own insights into the way neural networks can be understood, both for artificial ones and simplified simulations. As a whole, the publication underlines the importance of the ever-deepening mathematical understanding of neural networks.

Chapter

Front Cover

pp.:  1 – 4

Copyright Page

pp.:  5 – 6

Preface

pp.:  6 – 8

Table of Contents

pp.:  8 – 10

Chapter 2. Computational Learning Theory for Artificial Neural Networks

pp.:  34 – 72

Chapter 3. Time-summating Network Approach

pp.:  72 – 112

Chapter 4. The Numerical Analysis Approach

pp.:  112 – 148

Chapter 5. Self-organising Neural Networks for Stable Control of Autonomous Behavior in a Changing World

pp.:  148 – 208

Chapter 6. On-line Learning Processes in Artificial Neural Networks

pp.:  208 – 244

Chapter 7. Multilayer Functionals

pp.:  244 – 270

Chapter 8. Neural Networks: The Spin Glass Approach

pp.:  270 – 302

Chapter 9. Dynamics of Attractor Neural Networks

pp.:  302 – 316

Chapter 10. Information Theory and Neural Networks

pp.:  316 – 350

Chapter 11. Mathematical Analysis of a Competitive Network for Attention

pp.:  350 – 392

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