English

Fast and Efficient Gossip Algorithms for Robust and Non-smooth Decentralized Learning

Machine Learning 2026-05-08 v2 Artificial Intelligence Machine Learning

Abstract

Decentralized learning on resource-constrained edge devices demands algorithms that are communication-efficient, robust to data corruption, and lightweight in memory. State-of-the-art gossip-based methods address communication efficiency, but achieving robustness remains challenging. Methods for robust estimation and optimization typically rely on non-smooth objectives (\textit{e.g.}, pinball loss, 1\ell_1 loss), yet standard gossip methods are primarily designed for smooth losses. Asynchronous decentralized ADMM-based methods have been proposed to handle such non-smooth objectives; however, existing approaches require memory that scales with node degree, making them impractical when memory is limited. We propose AsylADMM, a novel asynchronous gossip algorithm for decentralized non-smooth optimization requiring only two variables per node. We provide a new theoretical analysis for the synchronous variant and leverage it to prove convergence of AsylADMM in a simplified setting based on the squared loss. Empirically, AsylADMM converges faster than existing baselines on challenging non-smooth problems, including quantile and geometric median estimation, lasso regression, and robust regression. More broadly, our novel gossip framework opens a practical pathway toward robust and non-smooth decentralized learning.

Keywords

Cite

@article{arxiv.2601.20571,
  title  = {Fast and Efficient Gossip Algorithms for Robust and Non-smooth Decentralized Learning},
  author = {Anna van Elst and Igor Colin and Stephan Clémençon},
  journal= {arXiv preprint arXiv:2601.20571},
  year   = {2026}
}
R2 v1 2026-07-01T09:23:53.882Z