English

Finite-Time Analysis of Asynchronous Multi-Agent TD Learning

Multiagent Systems 2024-07-31 v1

Abstract

Recent research endeavours have theoretically shown the beneficial effect of cooperation in multi-agent reinforcement learning (MARL). In a setting involving NN agents, this beneficial effect usually comes in the form of an NN-fold linear convergence speedup, i.e., a reduction - proportional to NN - in the number of iterations required to reach a certain convergence precision. In this paper, we show for the first time that this speedup property also holds for a MARL framework subject to asynchronous delays in the local agents' updates. In particular, we consider a policy evaluation problem in which multiple agents cooperate to evaluate a common policy by communicating with a central aggregator. In this setting, we study the finite-time convergence of \texttt{AsyncMATD}, an asynchronous multi-agent temporal difference (TD) learning algorithm in which agents' local TD update directions are subject to asynchronous bounded delays. Our main contribution is providing a finite-time analysis of \texttt{AsyncMATD}, for which we establish a linear convergence speedup while highlighting the effect of time-varying asynchronous delays on the resulting convergence rate.

Keywords

Cite

@article{arxiv.2407.20441,
  title  = {Finite-Time Analysis of Asynchronous Multi-Agent TD Learning},
  author = {Nicolò Dal Fabbro and Arman Adibi and Aritra Mitra and George J. Pappas},
  journal= {arXiv preprint arXiv:2407.20441},
  year   = {2024}
}
R2 v1 2026-06-28T17:57:35.895Z