Estimation and Inference in Distributional Reinforcement Learning

Abstract

In this paper, we study distributional reinforcement learning from the perspective of statistical efficiency. We investigate distributional policy evaluation, aiming to estimate the complete return distribution (denoted ηπ) attained by a given policy π. We use the certainty-equivalence method to construct our estimator ηπ, given a generative model is available. In this circumstance we need a dataset of size O(|S||A|2p(1-γ)2p+2) to guarantee the p-Wasserstein metric between ηπ and ηπ less than with high probability. This implies the distributional policy evaluation problem can be solved with sample efficiency. Also, we show that under different mild assumptions a dataset of size O(|S||A|2(1-γ)4) suffices to ensure the Kolmogorov metric and total variation metric between ηπ and ηπ is below with high probability. Furthermore, we investigate the asymptotic behavior of ηπ. We demonstrate that the ``empirical process'' n(ηπ-ηπ) converges weakly to a Gaussian process in the space of bounded functionals on Lipschitz function class ∞(FW), also in the space of bounded functionals on indicator function class ∞(FKS) and bounded measurable function class ∞(FTV) when some mild conditions hold. Our findings give rise to a unified approach to statistical inference of a wide class of statistical functionals of ηπ.

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