Minimax Weight Learning for Absorbing MDPs
Machine Learning
2023-09-06 v2
Abstract
Reinforcement learning policy evaluation problems are often modeled as finite or discounted/averaged infinite-horizon MDPs. In this paper, we study undiscounted off-policy policy evaluation for absorbing MDPs. Given the dataset consisting of the i.i.d episodes with a given truncation level, we propose a so-called MWLA algorithm to directly estimate the expected return via the importance ratio of the state-action occupancy measure. The Mean Square Error (MSE) bound for the MWLA method is investigated and the dependence of statistical errors on the data size and the truncation level are analyzed. With an episodic taxi environment, computational experiments illustrate the performance of the MWLA algorithm.
Cite
@article{arxiv.2301.03183,
title = {Minimax Weight Learning for Absorbing MDPs},
author = {Fengyin Li and Yuqiang Li and Xianyi Wu},
journal= {arXiv preprint arXiv:2301.03183},
year = {2023}
}
Comments
36 pages, 9 figures