Is Temporal Difference Learning Optimal? An Instance-Dependent Analysis
Abstract
We address the problem of policy evaluation in discounted Markov decision processes, and provide instance-dependent guarantees on the -error under a generative model. We establish both asymptotic and non-asymptotic versions of local minimax lower bounds for policy evaluation, thereby providing an instance-dependent baseline by which to compare algorithms. Theory-inspired simulations show that the widely-used temporal difference (TD) algorithm is strictly suboptimal when evaluated in a non-asymptotic setting, even when combined with Polyak-Ruppert iterate averaging. We remedy this issue by introducing and analyzing variance-reduced forms of stochastic approximation, showing that they achieve non-asymptotic, instance-dependent optimality up to logarithmic factors.
Cite
@article{arxiv.2003.07337,
title = {Is Temporal Difference Learning Optimal? An Instance-Dependent Analysis},
author = {Koulik Khamaru and Ashwin Pananjady and Feng Ruan and Martin J. Wainwright and Michael I. Jordan},
journal= {arXiv preprint arXiv:2003.07337},
year = {2020}
}
Comments
38 pages, 3 figures