English

Distributed Online Randomized Gradient-Free optimization with Compressed Communication

Optimization and Control 2025-05-06 v2

Abstract

This paper addresses two fundamental challenges in distributed online convex optimization: communication efficiency and optimization under limited feedback. We propose Online Compressed Gradient Tracking with one-point Bandit Feedback (OCGT-BF), a novel algorithm that harness data compression and gradient-free optimization techniques in distributed networks. Our algorithm incorporates a compression scheme with error compensation mechanisms to reduce communication overhead while maintaining convergence guarantees. Unlike traditional approaches that assume perfect communication and full gradient access, OCGT-BF operates effectively under practical constraints by combining gradient-like tracking with one-point feedback estimation. We provide theoretical analysis demonstrating the dynamic regret bounds under both bandit feedback and stochastic gradient scenarios. Finally, extensive experiments validate that OCGT-BF achieves low dynamic regret while significantly reducing communication requirements.

Keywords

Cite

@article{arxiv.2504.21693,
  title  = {Distributed Online Randomized Gradient-Free optimization with Compressed Communication},
  author = {Longkang Zhu and Xinli Shi and Xiangping Xu and Jinde Cao},
  journal= {arXiv preprint arXiv:2504.21693},
  year   = {2025}
}

Comments

We are withdrawing this manuscript due to factual errors identified in all the remarks presented. We will revise and resubmit a corrected version in the future

R2 v1 2026-06-28T23:16:53.580Z