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Autori principali: Mei, Leilei, Zhang, Junyu
Natura: Preprint
Pubblicazione: 2026
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Accesso online:https://arxiv.org/abs/2605.17027
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author Mei, Leilei
Zhang, Junyu
author_facet Mei, Leilei
Zhang, Junyu
contents Most stochastic gradient tracking (GT) methods adopt pre-scheduled stepsize rules, while a few recent works studied adaptive stepsizes that attempt to respond to the problem's local landscape. These methods are typically built upon the problem's global smoothness constant in both analysis and implementation, even for the adaptive ones. On the one hand, for many problems the local smoothness constant may vary drastically across the domain, and sometimes even unbounded, using the global upper bound of the local constants is too conservative. On the other hand, drastic stepsize changes can cause difficulties in the analysis of convergence and consensus of distributed algorithms, making the direct use of local smoothness constants risky and theoretically challenging. In this paper, we propose a \emph{Relative Uniform Continuity} (RUC) regularity condition for the local smoothness constant as a function of sets. The RUC condition covers most common growth functions for local smoothness constant, ranging from constant and logarithmic to polynomial and even exponential. For RUC-regular distributed optimization problems with finite-sum structure, we derive a clipped gradient tracking method with staggered variance reduction, which only relies on the local smoothness of objective functions, and an $\mathcal{O}(\sum_in_i^{1.5}+n_i^{0.5}ε^{-1})$ complexity has been established for our algorithm.
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publishDate 2026
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spellingShingle Clipped Stochastic Gradient Tracking For Locally Smooth Functions
Mei, Leilei
Zhang, Junyu
Optimization and Control
Most stochastic gradient tracking (GT) methods adopt pre-scheduled stepsize rules, while a few recent works studied adaptive stepsizes that attempt to respond to the problem's local landscape. These methods are typically built upon the problem's global smoothness constant in both analysis and implementation, even for the adaptive ones. On the one hand, for many problems the local smoothness constant may vary drastically across the domain, and sometimes even unbounded, using the global upper bound of the local constants is too conservative. On the other hand, drastic stepsize changes can cause difficulties in the analysis of convergence and consensus of distributed algorithms, making the direct use of local smoothness constants risky and theoretically challenging. In this paper, we propose a \emph{Relative Uniform Continuity} (RUC) regularity condition for the local smoothness constant as a function of sets. The RUC condition covers most common growth functions for local smoothness constant, ranging from constant and logarithmic to polynomial and even exponential. For RUC-regular distributed optimization problems with finite-sum structure, we derive a clipped gradient tracking method with staggered variance reduction, which only relies on the local smoothness of objective functions, and an $\mathcal{O}(\sum_in_i^{1.5}+n_i^{0.5}ε^{-1})$ complexity has been established for our algorithm.
title Clipped Stochastic Gradient Tracking For Locally Smooth Functions
topic Optimization and Control
url https://arxiv.org/abs/2605.17027