RUS  ENG
Full version
JOURNALS // Russian Journal of Cybernetics // Archive

Russian Journal of Cybernetics, 2021 Volume 2, Issue 4, Pages 6–14 (Mi uk85)

This article is cited in 3 papers

Mathematical problems of artificial intelligence and artificial neural networks

V. B. Betelina, V. A. Galkinb

a Federal State Institution “Scientific Research Institute for System Analysis of the Russian Academy of Sciences”, Moscow, Russian Federation
b Surgut Branch of Federal State Institute “Scientific Research Institute for System Analysis of the Russian Academy of Sciences”, Surgut, Russian Federation

Abstract: We propose a general topological approach to the analysis of artificial neural networks using simplicial complexes and the approximation of continuous mappings with simplicial ones. The essential properties of numerical instability in such problems were identified. It is associated with ill-posed problems in Hilbert space and regularization methods typically applied to Big Data processing. We formulated the criteria of artificial neural network accuracy and applicability and included some implementation examples based on the interpolation theory. Advancing P.L. Chebyshev's ideas about the best approximation may be an entry point to various mathematical research on artificial neural network training dataset optimization.

Keywords: artificial neural networks, optimization methods, numerical instability, regularization methods.

DOI: 10.51790/2712-9942-2021-2-4-1



© Steklov Math. Inst. of RAS, 2024