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Mathematics > Optimization and Control

arXiv:2511.12836 (math)
[Submitted on 16 Nov 2025]

Title:DIGing--SGLD: Decentralized and Scalable Langevin Sampling over Time--Varying Networks

Authors:Waheed U. Bajwa, Mert Gurbuzbalaban, Mustafa Ali Kutbay, Lingjiong Zhu, Muhammad Zulqarnain
View a PDF of the paper titled DIGing--SGLD: Decentralized and Scalable Langevin Sampling over Time--Varying Networks, by Waheed U. Bajwa and 4 other authors
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Abstract:Sampling from a target distribution induced by training data is central to Bayesian learning, with Stochastic Gradient Langevin Dynamics (SGLD) serving as a key tool for scalable posterior sampling and decentralized variants enabling learning when data are distributed across a network of agents. This paper introduces DIGing-SGLD, a decentralized SGLD algorithm designed for scalable Bayesian learning in multi-agent systems operating over time-varying networks. Existing decentralized SGLD methods are restricted to static network topologies, and many exhibit steady-state sampling bias caused by network effects, even when full batches are used. DIGing-SGLD overcomes these limitations by integrating Langevin-based sampling with the gradient-tracking mechanism of the DIGing algorithm, originally developed for decentralized optimization over time-varying networks, thereby enabling efficient and bias-free sampling without a central coordinator. To our knowledge, we provide the first finite-time non-asymptotic Wasserstein convergence guarantees for decentralized SGLD-based sampling over time-varying networks, with explicit constants. Under standard strong convexity and smoothness assumptions, DIGing-SGLD achieves geometric convergence to an O(\sqrt{\eta}) neighborhood of the target distribution, where \eta is the stepsize, with dependence on the target accuracy matching the best-known rates for centralized and static-network SGLD algorithms using constant stepsize. Numerical experiments on Bayesian linear and logistic regression validate the theoretical results and demonstrate the strong empirical performance of DIGing-SGLD under dynamically evolving network conditions.
Subjects: Optimization and Control (math.OC); Machine Learning (cs.LG); Machine Learning (stat.ML)
Cite as: arXiv:2511.12836 [math.OC]
  (or arXiv:2511.12836v1 [math.OC] for this version)
  https://doi.org/10.48550/arXiv.2511.12836
arXiv-issued DOI via DataCite (pending registration)

Submission history

From: Mert Gürbüzbalaban [view email]
[v1] Sun, 16 Nov 2025 23:42:44 UTC (1,221 KB)
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