Provably Fast Convergence of Independent Natural Policy Gradient for Markov Potential Games (2310.09727v2)
Abstract: This work studies an independent natural policy gradient (NPG) algorithm for the multi-agent reinforcement learning problem in Markov potential games. It is shown that, under mild technical assumptions and the introduction of the \textit{suboptimality gap}, the independent NPG method with an oracle providing exact policy evaluation asymptotically reaches an $\epsilon$-Nash Equilibrium (NE) within $\mathcal{O}(1/\epsilon)$ iterations. This improves upon the previous best result of $\mathcal{O}(1/\epsilon2)$ iterations and is of the same order, $\mathcal{O}(1/\epsilon)$, that is achievable for the single-agent case. Empirical results for a synthetic potential game and a congestion game are presented to verify the theoretical bounds.
- Youbang Sun (15 papers)
- Tao Liu (350 papers)
- Ruida Zhou (39 papers)
- P. R. Kumar (78 papers)
- Shahin Shahrampour (53 papers)