English

Convergent Actor-Critic Algorithms Under Off-Policy Training and Function Approximation

Artificial Intelligence 2018-02-23 v1

Abstract

We present the first class of policy-gradient algorithms that work with both state-value and policy function-approximation, and are guaranteed to converge under off-policy training. Our solution targets problems in reinforcement learning where the action representation adds to the-curse-of-dimensionality; that is, with continuous or large action sets, thus making it infeasible to estimate state-action value functions (Q functions). Using state-value functions helps to lift the curse and as a result naturally turn our policy-gradient solution into classical Actor-Critic architecture whose Actor uses state-value function for the update. Our algorithms, Gradient Actor-Critic and Emphatic Actor-Critic, are derived based on the exact gradient of averaged state-value function objective and thus are guaranteed to converge to its optimal solution, while maintaining all the desirable properties of classical Actor-Critic methods with no additional hyper-parameters. To our knowledge, this is the first time that convergent off-policy learning methods have been extended to classical Actor-Critic methods with function approximation.

Keywords

Cite

@article{arxiv.1802.07842,
  title  = {Convergent Actor-Critic Algorithms Under Off-Policy Training and Function Approximation},
  author = {Hamid Reza Maei},
  journal= {arXiv preprint arXiv:1802.07842},
  year   = {2018}
}
R2 v1 2026-06-23T00:29:32.724Z