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Main Author: Lakshmanan, K.
Format: Preprint
Published: 2026
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Online Access:https://arxiv.org/abs/2603.09634
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author Lakshmanan, K.
author_facet Lakshmanan, K.
contents Stochastic gradient methods are among the most widely used algorithms for large-scale optimization and machine learning. A key technique for improving the statistical efficiency and stability of these methods is the use of averaging schemes applied to the sequence of iterates generated during optimization. Starting from the classical work on stochastic approximation, averaging techniques such as Polyak--Ruppert averaging have been shown to achieve optimal asymptotic variance and improved convergence behavior. In recent years, averaging methods have gained renewed attention in machine learning applications, particularly in the training of deep neural networks and large-scale learning systems. Techniques such as tail averaging, exponential moving averages, and stochastic weight averaging have demonstrated strong empirical performance and improved generalization properties. This paper provides a survey of averaging techniques in stochastic gradient optimization. We review the theoretical foundations of averaged stochastic approximation, discuss modern developments in stochastic gradient methods, and examine applications of averaging in machine learning. In addition, we summarize recent results on the finite-sample behavior of averaging schemes and highlight several open problems and directions for future research.
format Preprint
id arxiv_https___arxiv_org_abs_2603_09634
institution arXiv
publishDate 2026
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spellingShingle A Short Survey of Averaging Techniques in Stochastic Gradient Methods
Lakshmanan, K.
Optimization and Control
62L20
Stochastic gradient methods are among the most widely used algorithms for large-scale optimization and machine learning. A key technique for improving the statistical efficiency and stability of these methods is the use of averaging schemes applied to the sequence of iterates generated during optimization. Starting from the classical work on stochastic approximation, averaging techniques such as Polyak--Ruppert averaging have been shown to achieve optimal asymptotic variance and improved convergence behavior. In recent years, averaging methods have gained renewed attention in machine learning applications, particularly in the training of deep neural networks and large-scale learning systems. Techniques such as tail averaging, exponential moving averages, and stochastic weight averaging have demonstrated strong empirical performance and improved generalization properties. This paper provides a survey of averaging techniques in stochastic gradient optimization. We review the theoretical foundations of averaged stochastic approximation, discuss modern developments in stochastic gradient methods, and examine applications of averaging in machine learning. In addition, we summarize recent results on the finite-sample behavior of averaging schemes and highlight several open problems and directions for future research.
title A Short Survey of Averaging Techniques in Stochastic Gradient Methods
topic Optimization and Control
62L20
url https://arxiv.org/abs/2603.09634