Discontinuous convex contractions and their applications in neural networks

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Springer Heidelberg

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info:eu-repo/semantics/embargoedAccess

Özet

In this paper, we show that the class of convex contractions of order m ∈ N is strong enough to generate a fixed point but do not force the mapping to be continuous at the fixed point. As a by-product, we provide a new setting to answer an open question posed by Rhoades (Contemp Math 72:233–245, 1988). In recent years, neural network systems with discontinuous activation functions have received intensive research interest and some theoretical fixed point results (Brouwer’s fixed point theorem, Banach fixed point theorem, Kakutani’s fixed point theorem, Krasnoselskii fixed point theorem, etc.,) have been used in the theoretical studies of neural networks. Therefore, possible applications of our theoretical results can contribute to the study of neural networks both in terms of fixed point theory and discontinuity at fixed point.

Açıklama

Özgür, Nihal (Balikesir Author)

Anahtar Kelimeler

Fixed Point, Convex Contraction Mappings, K-Continuity, Heaviside Function

Kaynak

Computational and Applied Mathematics

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Cilt

40

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1

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Onay

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