Central Limit Theorems for Asynchronous Averaged Q-Learning

2025-09-23 19:00 GMT · 7 months ago aimagpro.com

arXiv:2509.18964v1 Announce Type: cross
Abstract: This paper establishes central limit theorems for Polyak-Ruppert averaged Q-learning under asynchronous updates. We present a non-asymptotic central limit theorem, where the convergence rate in Wasserstein distance explicitly reflects the dependence on the number of iterations, state-action space size, the discount factor, and the quality of exploration. In addition, we derive a functional central limit theorem, showing that the partial-sum process converges weakly to a Brownian motion.