Issues on the Complexy of Training Weightless Neural Networks

Título: Issues on the Complexy of Training Weightless Neural Networks

Autores: Souto, Marcílio C. P. de; Guimarães, Katia S.; Ludermir, Teresa B.

Resumo: In this paper, it is extended the Judd’s results with respect to learning computacional complexity of weighted neural models to include the weightless neural models. It is shown, for example, that also is NP-complete any algorithm that aims to load any performable training set in any conceivable weightless neural network. It is also conjectured that a specific architecture class, pyramidal architectures (for the weightless models), may be a way to overcome the NP-completeness of learning.

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Páginas: 5

Código DOI: 10.21528/CBRN1994-002

Artigo em PDF: CBRN1994-paper2.pdf

Arquivo BibTex: CBRN1994-paper2.bib