Parallel implementations of backpropagation neural networks on transputers : a study of training set parallelism

Bibliographic Information

Parallel implementations of backpropagation neural networks on transputers : a study of training set parallelism

[editors], P. Saratchandran, N. Sundararajan, Shou King Foo

(Progress in neural processing, 3)

World Scientific, c1996

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Note

Includes bibliographical references (p. 189-199) and index

Description and Table of Contents

Description

This book presents a systematic approach to parallel implementation of feedforward neural networks on an array of transputers. The emphasis is on backpropagation learning and training set parallelism. Using systematic analysis, a theoretical model has been developed for the parallel implementation. The model is used to find the optimal mapping to minimize the training time for large backpropagation neural networks. The model has been validated experimentally on several well known benchmark problems. Use of genetic algorithms for optimizing the performance of the parallel implementations is described. Guidelines for efficient parallel implementations are highlighted.

Table of Contents

  • Hardware and software aspects
  • transputer topologies for parallel implementation
  • comparison between serial and parallel implementation
  • analysis and implementation for equal distribution of the training set in a homogeneous transputer array
  • analysis and implementation for unequal distribution of the training set in a homogeneous transputer array
  • analysis and implementation for unequal distribution of the training set in a heterogeneous transputer array
  • conclusion.

by "Nielsen BookData"

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