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Online Bootstrap Inference For Policy Evaluation in Reinforcement Learning

Authors :
Ramprasad, Pratik
Li, Yuantong
Yang, Zhuoran
Wang, Zhaoran
Sun, Will Wei
Cheng, Guang
Publication Year :
2021

Abstract

The recent emergence of reinforcement learning has created a demand for robust statistical inference methods for the parameter estimates computed using these algorithms. Existing methods for statistical inference in online learning are restricted to settings involving independently sampled observations, while existing statistical inference methods in reinforcement learning (RL) are limited to the batch setting. The online bootstrap is a flexible and efficient approach for statistical inference in linear stochastic approximation algorithms, but its efficacy in settings involving Markov noise, such as RL, has yet to be explored. In this paper, we study the use of the online bootstrap method for statistical inference in RL. In particular, we focus on the temporal difference (TD) learning and Gradient TD (GTD) learning algorithms, which are themselves special instances of linear stochastic approximation under Markov noise. The method is shown to be distributionally consistent for statistical inference in policy evaluation, and numerical experiments are included to demonstrate the effectiveness of this algorithm at statistical inference tasks across a range of real RL environments.<br />Comment: To Appear in Journal of the American Statistical Association

Details

Database :
arXiv
Publication Type :
Report
Accession number :
edsarx.2108.03706
Document Type :
Working Paper