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JOURNALS // Computer Optics // Archive

Computer Optics, 2023 Volume 47, Issue 1, Pages 160–169 (Mi co1113)

NUMERICAL METHODS AND DATA ANALYSIS

A new approach to training neural networks using natural gradient descent with momentum based on Dirichlet distributions

R. I. Abdulkadirova, P. A. Lyakhovb

a North-Caucasus Center for Mathematical Research, North-Caucasus Federal University, Stavropol
b North-Caucasus Federal University

Abstract: In this paper, we propose a natural gradient descent algorithm with momentum based on Dirichlet distributions to speed up the training of neural networks. This approach takes into account not only the direction of the gradients, but also the convexity of the minimized function, which significantly accelerates the process of searching for the extremes. Calculations of natural gradients based on Dirichlet distributions are presented, with the proposed approach introduced into an error backpropagation scheme. The results of image recognition and time series forecasting during the experiments show that the proposed approach gives higher accuracy and does not require a large number of iterations to minimize loss functions compared to the methods of stochastic gradient descent, adaptive moment estimation and adaptive parameter-wise diagonal quasi-Newton method for nonconvex stochastic optimization

Keywords: pattern recognition, machine learning, optimization, Dirichlet distributions, natural gradient descent

Received: 07.04.2022
Accepted: 24.08.2022

DOI: 10.18287/2412-6179-CO-1147



© Steklov Math. Inst. of RAS, 2024