Comparison and Unification of Three Regularization Methods in Batch Reinforcement Learning
Abstract
In batch reinforcement learning, there can be poorly explored state-action pairs resulting in poorly learned, inaccurate models and poorly performing associated policies. Various regularization methods can mitigate the problem of learning overly-complex models in Markov decision processes (MDPs), however they operate in technically and intuitively distinct ways and lack a common form in which to compare them. This paper unifies three regularization methods in a common framework -- a weighted average transition matrix. Considering regularization methods in this common form illuminates how the MDP structure and the state-action pair distribution of the batch data set influence the relative performance of regularization methods. We confirm intuitions generated from the common framework by empirical evaluation across a range of MDPs and data collection policies.
Cite
@article{arxiv.2109.08134,
title = {Comparison and Unification of Three Regularization Methods in Batch Reinforcement Learning},
author = {Sarah Rathnam and Susan A. Murphy and Finale Doshi-Velez},
journal= {arXiv preprint arXiv:2109.08134},
year = {2021}
}
Comments
ICML Workshop on Reinforcement Learning Theory 2021