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JOURNALS // Russian Journal of Cybernetics // Archive

Russian Journal of Cybernetics, 2023 Volume 4, Issue 3, Pages 47–54 (Mi uk122)

Applicability of convoluted neural networks to the dataset fitting problem

A. D. Smorodinovab, T. V. Gavrilenkoba, A. A. Rassadina

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

Abstract: We analyzed the applicability of convolutional neural networks to solving the dataset fitting problem. The convolutional neural network was trained with training datasets containing function curves. We selected 6 linearizable functions. The convolutional neural network detected the functional relations in the datasets taken from the MNIST database intended for statistical software testing. The results show that it is possible to use the proposed approach for visual correlation analysis and curve-based data fitting.

Keywords: artificial neural networks, data fitting, convolutional neural networks, correlation analysis.

DOI: 10.51790/2712-9942-2023-4-3-05



© Steklov Math. Inst. of RAS, 2024