Efficiently Solving MDPs with Stochastic Mirror Descent
Abstract
We present a unified framework based on primal-dual stochastic mirror descent for approximately solving infinite-horizon Markov decision processes (MDPs) given a generative model. When applied to an average-reward MDP with $A_{tot}$ total actions and mixing time bound $t_{mix}$ our method computes an $\epsilon$-optimal policy with an expected $\widetilde{O}(t_{mix}^2 A_{tot} \epsilon^{-2})$ samples from the state-transition matrix, removing the ergodicity dependence of prior art. When applied to a $\gamma$-discounted MDP with $A_{tot}$ total actions our method computes an $\epsilon$-optimal policy with an expected $\widetilde{O}((1-\gamma)^{-4} A_{tot} \epsilon^{-2})$ samples, improving over the best-known primal-dual methods while matching the state-of-the-art up to a $(1-\gamma)^{-1}$ factor. Both methods are model-free, update state values and policies simultaneously, and run in time linear in the number of samples taken. We achieve these results through a more general stochastic mirror descent framework for solving bilinear saddle-point problems with simplex and box domains and we demonstrate the flexibility of this framework by providing further applications to constrained MDPs.
Cite
Text
Jin and Sidford. "Efficiently Solving MDPs with Stochastic Mirror Descent." International Conference on Machine Learning, 2020.Markdown
[Jin and Sidford. "Efficiently Solving MDPs with Stochastic Mirror Descent." International Conference on Machine Learning, 2020.](https://mlanthology.org/icml/2020/jin2020icml-efficiently/)BibTeX
@inproceedings{jin2020icml-efficiently,
title = {{Efficiently Solving MDPs with Stochastic Mirror Descent}},
author = {Jin, Yujia and Sidford, Aaron},
booktitle = {International Conference on Machine Learning},
year = {2020},
pages = {4890-4900},
volume = {119},
url = {https://mlanthology.org/icml/2020/jin2020icml-efficiently/}
}