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Knowledgebased Neurocomputing A Fuzzy Logic Approach 1st Edition Eyal Kolman

  • SKU: BELL-1286580
Knowledgebased Neurocomputing A Fuzzy Logic Approach 1st Edition Eyal Kolman
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Knowledgebased Neurocomputing A Fuzzy Logic Approach 1st Edition Eyal Kolman instant download after payment.

Publisher: Springer-Verlag Berlin Heidelberg
File Extension: PDF
File size: 2.17 MB
Pages: 100
Author: Eyal Kolman, Michael Margaliot (auth.)
ISBN: 9783540880769, 3540880763
Language: English
Year: 2009
Edition: 1

Product desciption

Knowledgebased Neurocomputing A Fuzzy Logic Approach 1st Edition Eyal Kolman by Eyal Kolman, Michael Margaliot (auth.) 9783540880769, 3540880763 instant download after payment.

In this monograph, the authors introduce a novel fuzzy rule-base, referred to as the Fuzzy All-permutations Rule-Base (FARB). They show that inferring the FARB, using standard tools from fuzzy logic theory, yields an input-output map that is mathematically equivalent to that of an artificial neural network. Conversely, every standard artificial neural network has an equivalent FARB.

The FARB-ANN equivalence integrates the merits of symbolic fuzzy rule-bases and sub-symbolic artificial neural networks, and yields a new approach for knowledge-based neurocomputing in artificial neural networks.

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