Regret Analysis of Average-Reward Unichain MDPs via an Actor-Critic Approach
- URL: http://arxiv.org/abs/2505.19986v1
- Date: Mon, 26 May 2025 13:43:02 GMT
- Title: Regret Analysis of Average-Reward Unichain MDPs via an Actor-Critic Approach
- Authors: Swetha Ganesh, Vaneet Aggarwal,
- Abstract summary: We propose a Natural Actor-Critic with order-optimal regret of $tildeO(sqrtT)$ in infinite-reward average-reward Decision Processes.<n> NACB employs function approximation for both actor and the critic, enabling scalability to large state potential periodicity and action spaces.
- Score: 33.38582292895673
- License: http://arxiv.org/licenses/nonexclusive-distrib/1.0/
- Abstract: Actor-Critic methods are widely used for their scalability, yet existing theoretical guarantees for infinite-horizon average-reward Markov Decision Processes (MDPs) often rely on restrictive ergodicity assumptions. We propose NAC-B, a Natural Actor-Critic with Batching, that achieves order-optimal regret of $\tilde{O}(\sqrt{T})$ in infinite-horizon average-reward MDPs under the unichain assumption, which permits both transient states and periodicity. This assumption is among the weakest under which the classic policy gradient theorem remains valid for average-reward settings. NAC-B employs function approximation for both the actor and the critic, enabling scalability to problems with large state and action spaces. The use of batching in our algorithm helps mitigate potential periodicity in the MDP and reduces stochasticity in gradient estimates, and our analysis formalizes these benefits through the introduction of the constants $C_{\text{hit}}$ and $C_{\text{tar}}$, which characterize the rate at which empirical averages over Markovian samples converge to the stationary distribution.
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