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This article is cited in 2 scientific papers (total in 2 papers)
INFORMATION AND COMPUTATION TECHNOLOGIES
Some aspects of approximation and interpolation of functions artificial neural networks
V. A. Galkin, T. V. Gavrilenko, A. D. Smorodinov Surgut Branch of SRISA; Surgut State University
Abstract:
The article deals with the issues of approximation and interpolation of functions f(x) = |x|, f(x) = sin(x), f(x) =1/(1+25x²) with the help of neural networks from those constructed on the basis of the Kolmogorov-Arnold and Tsybenko theorems. problems in training a neural network based on the initialization of weight coefficients in a random way are shown. The possibility of training a neural network to work with a variety is shown.
Keywords:
approximation of functions, interpolation of functions, artificial neural networks, Tsybenko's theorem, Kolmogorov-Arnold's theorem.
Citation:
V. A. Galkin, T. V. Gavrilenko, A. D. Smorodinov, “Some aspects of approximation and interpolation of functions artificial neural networks”, Vestnik KRAUNC. Fiz.-Mat. Nauki, 38:1 (2022), 54–73
Linking options:
https://www.mathnet.ru/eng/vkam526 https://www.mathnet.ru/eng/vkam/v38/i1/p54
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