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Designing neural network architectures for pattern recognition

Published online by Cambridge University Press:  10 November 2000

MIROSLAV KUBAT
Affiliation:
Center for Advanced Computer Studies, University of Louisiana at Lafayette, LA 70504–4330, USA (email: mkubat@cacs.usl.edu)

Abstract

An appropriately designed architecture of a neural network is essential to many realistic pattern-recognition tasks. A choice of just the right number of neurons, and their interconnections, can cut learning costs by orders of magnitude, and still warrant high classification accuracy. Surprisingly, textbooks often neglect this issue. A specialist seeking systematic information will soon realize that relevant material is scattered over diverse sources, each with a different perspective, terminology and goals. This brief survey attempts to rectify the situation by explaining the involved aspects, and by describing some of the fundamental techniques.

Type
Review Article
Copyright
© 2000 Cambridge University Press

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