On the Global Convergence of Actor-Critic: A Case for Linear Quadratic Regulator with Ergodic Cost (1907.06246v1)
Abstract: Despite the empirical success of the actor-critic algorithm, its theoretical understanding lags behind. In a broader context, actor-critic can be viewed as an online alternating update algorithm for bilevel optimization, whose convergence is known to be fragile. To understand the instability of actor-critic, we focus on its application to linear quadratic regulators, a simple yet fundamental setting of reinforcement learning. We establish a nonasymptotic convergence analysis of actor-critic in this setting. In particular, we prove that actor-critic finds a globally optimal pair of actor (policy) and critic (action-value function) at a linear rate of convergence. Our analysis may serve as a preliminary step towards a complete theoretical understanding of bilevel optimization with nonconvex subproblems, which is NP-hard in the worst case and is often solved using heuristics.
- Zhuoran Yang (155 papers)
- Yongxin Chen (146 papers)
- Mingyi Hong (172 papers)
- Zhaoran Wang (164 papers)