A Lyapunov Theory for Finite-Sample Guarantees of Asynchronous
Q-Learning and TD-Learning Variants
- OffRL
This paper develops an unified framework to study finite-sample convergence guarantees of a large class of value-based asynchronous Reinforcement Learning (RL) algorithms. We do this by first reformulating the RL algorithms as Markovian Stochastic Approximation (SA) algorithms to solve fixed-point equations. We then develop a Lyapunov analysis and derive mean-square error bounds on the convergence of the Markovian SA. Based on this central result, we establish finite-sample mean-square convergence bounds for asynchronous RL algorithms such as -learning, -step TD, TD, and off-policy TD algorithms including V-trace. As a by-product, by analyzing the performance bounds of the TD (and -step TD) algorithm for general (and ), we demonstrate a bias-variance trade-off, i.e., efficiency of bootstrapping in RL. This was first posed as an open problem in [37].
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