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JOURNALS // Uspekhi Fizicheskikh Nauk // Archive

UFN, 2022 Volume 192, Number 10, Pages 1089–1109 (Mi ufn7092)

This article is cited in 5 papers

REVIEWS OF TOPICAL PROBLEMS

Nonlinear dynamics and machine learning of recurrent spiking neural networks

O. V. Maslennikov, M. M. Pugavko, D. S. Shchapin, V. I. Nekorkin

Federal Research Center Institute of Applied Physics, Russian Academy of Sciences, Nizhny Novgorod

Abstract: Major achievements in designing and analyzing recurrent spiking neural networks intended for modeling functional brain networks are reviewed. Key terms and definitions employed in machine learning are introduced. The main approaches to the development and exploration of spiking and rate neural networks trained to perform specific cognitive functions are presented. State-of-the-art neuromorphic hardware systems simulating information processing by the brain are described. Concepts of nonlinear dynamics are discussed, which enable identification of the mechanisms used by neural networks to perform target tasks.

PACS: 07.05.Mh, 84.35.+i, 87.19.L-

Received: June 1, 2021
Revised: August 13, 2021
Accepted: August 13, 2021

DOI: 10.3367/UFNr.2021.08.039042


 English version:
Physics–Uspekhi, 2022, 65:10, 1020–1038

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© Steklov Math. Inst. of RAS, 2024