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JOURNALS // Zhurnal Vychislitel'noi Matematiki i Matematicheskoi Fiziki // Archive

Zh. Vychisl. Mat. Mat. Fiz., 2024 Volume 64, Number 4, Pages 575–586 (Mi zvmmf11728)

Optimal control

Stochastic gradient descent with preconditioned Polyak step-size

F. Abdukhakimov, C. Xiang, D. Kamzolov, M. Takáč

Mohamed bin Zayed University of Artificial Intelligence, Abu Dhabi, UAE

Abstract: Stochastic Gradient Descent (SGD) is one of the many iterative optimization methods that are widely used in solving machine learning problems. These methods display valuable properties and attract researchers and industrial machine learning engineers with their simplicity. However, one of the weaknesses of this type of methods is the necessity to tune learning rate (step-size) for every loss function and dataset combination to solve an optimization problem and get an efficient performance in a given time budget. Stochastic Gradient Descent with Polyak Step-size (SPS) is a method that offers an update rule that alleviates the need of fine-tuning the learning rate of an optimizer. In this paper, we propose an extension of SPS that employs preconditioning techniques, such as Hutchinson’s method, Adam, and AdaGrad, to improve its performance on badly scaled and/or ill-conditioned datasets.

Key words: machine learning, optimization, adaptive step-size, Polyak step-size, preconditioning.

UDC: 517.97

Received: 02.11.2023
Revised: 16.12.2023
Accepted: 20.12.2023

DOI: 10.31857/S0044466924040016


 English version:
Computational Mathematics and Mathematical Physics, 2024, 64:4, 621–634

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© Steklov Math. Inst. of RAS, 2024