Feed-forward neural networks using hermite polynomial activation functions

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Abstract

In this paper feed-forward neural networks are introduced where hidden units employ orthogonal Herrnite polynomials for their activation functions. The proposed neural networks have some interesting properties: (i) the basis functions are invariant under the Fourier transform, subject only to a change of scale, and (ii) the basis functions are the eigenstates of the quantum harmonic oscillator, and stem from the solution of Schrödinger's diffusion equation. The proposed neural networks demonstrate the particle-wave nature of information and can be used in nonparametric estimation. Possible applications of neural networks with Hermite basis functions include system modelling and image processing. © Springer-Vorlag Berlin Hoidelberg 2006.

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APA

Rigatos, G. G., & Tzafestas, S. G. (2006). Feed-forward neural networks using hermite polynomial activation functions. In Lecture Notes in Computer Science (including subseries Lecture Notes in Artificial Intelligence and Lecture Notes in Bioinformatics) (Vol. 3955 LNAI, pp. 323–333). Springer Verlag. https://doi.org/10.1007/11752912_33

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