1st Edition

Neural Computing - An Introduction

By R Beale, T Jackson Copyright 1990
    256 Pages
    by CRC Press

    256 Pages
    by CRC Press

    Neural computing is one of the most interesting and rapidly growing areas of research, attracting researchers from a wide variety of scientific disciplines. Starting from the basics, Neural Computing covers all the major approaches, putting each in perspective in terms of their capabilities, advantages, and disadvantages. The book also highlights the applications of each approach and explores the relationships among models developed and between the brain and its function.

    A comprehensive and comprehensible introduction to the subject, this book is ideal for undergraduates in computer science, physicists, communications engineers, workers involved in artificial intelligence, biologists, psychologists, and physiologists.

    INTRODUCTION
    Humans and computers
    The structure of the brain
    Learning in machines
    The differences
    Summary

    PATTERN RECOGNITION
    Introduction
    Pattern recognition in perspective
    Pattern recognition-a definition
    Feature vectors and feature space
    Discriminant functions
    Classification techniques
    Linear classifiers
    Statistical techniques
    Pattern recognition-a summary

    THE BASIC NEURON
    Introduction
    Modeling the single neuron
    Learning in simple neurons
    The perceptron: a vectorial perspective
    The perceptron learning rule: proof
    Limitations of perceptrons
    The end of the line?
    Summary

    THE MULTILAYER PERCEPTRON
    Introduction
    Altering the perceptron model
    The new model
    The new learning rule
    The multilayer perceptron algorithm
    The XOR problem revisited
    Visualizing network behavior
    Multilayer perceptrons as classifiers
    Generalization
    Fault tolerance
    Learning difficulties
    Radial basis functions
    Applications
    Summary

    KOHONEN SELF-ORGANIZING NETWORKS
    Introduction
    The Kohonen algorithm
    Weight training
    Neighborhoods
    Reducing the neighborhood
    Learning vector quantization (LVQ)
    The phonetic typewriter
    Summary

    HOPFIELD NETWORKS
    Introduction
    The Hopfield model
    The energy landscape
    The Boltzmann machine
    Constraint satisfaction
    Summary

    ADAPTIVE RESONANCE THEORY
    Introduction
    Adaptive resonance theory (ART)
    Architecture and operation
    ART algorithm
    Training the ART network
    Classification
    Conclusion
    Summary of ART

    ASSOCIATIVE MEMORY
    Standard computer memory
    Implementing associative memory
    Implementation in RAMs
    RAMs and N-tupling
    Willshaw's associative net
    The ADAM system
    Kanerva's sparse distributed memory
    Bidirectional associative memories
    Conclusion
    Summary

    INTO THE LOOKING GLASS
    Overview
    Hardware and software implementations
    Optical computing
    Optical computing and neural networks

    INDEX

    Biography

    R Beale, T Jackson

    "Neural Computing is easy on the eye with a good layout and use of graphical icons to draw attention to mathematical proofs, algorithms (in clear format, which would lend itself to computer implementation), and summary sections."
    -Denise Gorse, Times Higher Education Supplement

    "… most accessible. … I was most impressed with the quality of this book. … hard pressed to beat …"
    -David Williams, The Australian Computer Journal

    "It is clear that any introductory book must explain what the leaders of the current revival have done. This is well done by Beale and Jackson."
    -Igor Aleksander, Imperial College of Science, Technology and Medicine, London, UK