Sharp Gaussian approximations for Decentralized Federated Learning
Abstract
Federated Learning has gained traction in privacy-sensitive collaborative environments, with local SGD emerging as a key optimization method in decentralized settings. While its convergence properties are well-studied, asymptotic statistical guarantees beyond convergence remain limited. In this paper, we present two generalized Gaussian approximation results for local SGD and explore their implications. First, we prove a Berry-Esseen theorem for the final local SGD iterates, enabling valid multiplier bootstrap procedures. Second, motivated by robustness considerations, we introduce two distinct time-uniform Gaussian approximations for the entire trajectory of local SGD. The time-uniform approximations support Gaussian bootstrap-based tests for detecting adversarial attacks. Extensive simulations are provided to support our theoretical results.
Keywords
Cite
@article{arxiv.2505.08125,
title = {Sharp Gaussian approximations for Decentralized Federated Learning},
author = {Soham Bonnerjee and Sayar Karmakar and Wei Biao Wu},
journal= {arXiv preprint arXiv:2505.08125},
year = {2026}
}
Comments
Accepted as Spotlight, NeurIPS'25, Main Conference Track