English

Gap-Dependent Bounds for Federated $Q$-learning

Machine Learning 2025-09-19 v2 Machine Learning

Abstract

We present the first gap-dependent analysis of regret and communication cost for on-policy federated QQ-Learning in tabular episodic finite-horizon Markov decision processes (MDPs). Existing FRL methods focus on worst-case scenarios, leading to T\sqrt{T}-type regret bounds and communication cost bounds with a logT\log T term scaling with the number of agents MM, states SS, and actions AA, where TT is the average total number of steps per agent. In contrast, our novel framework leverages the benign structures of MDPs, such as a strictly positive suboptimality gap, to achieve a logT\log T-type regret bound and a refined communication cost bound that disentangles exploration and exploitation. Our gap-dependent regret bound reveals a distinct multi-agent speedup pattern, and our gap-dependent communication cost bound removes the dependence on MSAMSA from the logT\log T term. Notably, our gap-dependent communication cost bound also yields a better global switching cost when M=1M=1, removing SASA from the logT\log T term.

Keywords

Cite

@article{arxiv.2502.02859,
  title  = {Gap-Dependent Bounds for Federated $Q$-learning},
  author = {Haochen Zhang and Zhong Zheng and Lingzhou Xue},
  journal= {arXiv preprint arXiv:2502.02859},
  year   = {2025}
}
R2 v1 2026-06-28T21:32:57.350Z