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Conference Papers Year : 2000

Simplified neural architectures for symmetric boolean functions

Bernard Girau

Abstract

The theoretical and practical framework of Field Programmable Neural Arrays has been defined to reconcile simple hardware topologies with complex neural architectures: FPNAs lead to powerful neural models whose original data exchange scheme allows to use hardware-friendly neural topologies. This paper addresses preliminary results in the study of the computation power of FPNAs. The computation of symmetric boolean functions is taken as a textbook example. The FPNA concept allows successive topology simplifications of standard neural models for such functions, so that the number of weights is greatly reduced with respect to previous works.
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Dates and versions

inria-00099318 , version 1 (26-09-2006)

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  • HAL Id : inria-00099318 , version 1

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Bernard Girau. Simplified neural architectures for symmetric boolean functions. European Symposium on Artificial Neural Networks, 2000, none. ⟨inria-00099318⟩
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