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JOURNALS // Uspekhi Matematicheskikh Nauk // Archive

Uspekhi Mat. Nauk, 2024 Volume 79, Issue 6(480), Pages 5–38 (Mi rm10206)

Accelerated Stochastic ExtraGradient: Mixing Hessian and gradient similarity to reduce communication in distributed and federated learning

D. A. Bylinkinab, K. D. Degtyareva, A. N. Beznosikovbcd

a Moscow Institute of Physics and Technology (National Research University), Moscow, Russia
b Ivannikov Institute for System Programming of the Russian Academy of Sciences, Moscow, Russia
c Sber AI Lab, Moscow, Russia
d Innopolis University, Innopolis, Russia

Abstract: Modern realities and trends in learning require more and more generalization ability of models, which leads to an increase in both models and training sample size. It is already difficult to solve such tasks in a single device mode. This is the reason why distributed and federated learning approaches are becoming more popular every day. Distributed computing involves communication between devices, which requires solving two key problems: efficiency and privacy. One of the most well-known approaches to combat communication costs is to exploit the similarity of local data. Both Hessian similarity and homogeneous gradients have been studied in the literature, but separately. In this paper we combine both of these assumptions in analyzing a new method that incorporates the ideas of using data similarity and clients sampling. Moreover, to address privacy concerns, we apply the technique of additional noise and analyze its impact on the convergence of the proposed method. The theory is confirmed by training on real datasets.
Bibliography: 45 titles.

Keywords: ASEG, distributed learning, federated learning, communication costs, Hessian similarity, homogeneous gradients, technique of additional noise.

UDC: 519.853.3+519.853.62

Received: 15.08.2024

Language: English

DOI: 10.4213/rm10206



© Steklov Math. Inst. of RAS, 2024