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Main Authors: Wang, Weizhen, He, Jianping, Duan, Xiaoming
Format: Preprint
Published: 2025
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Online Access:https://arxiv.org/abs/2503.22244
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author Wang, Weizhen
He, Jianping
Duan, Xiaoming
author_facet Wang, Weizhen
He, Jianping
Duan, Xiaoming
contents Policy gradient methods are one of the most successful approaches for solving challenging reinforcement learning problems. Despite their empirical successes, many state-of-the-art policy gradient algorithms for discounted problems deviate from the theoretical policy gradient theorem due to the existence of a distribution mismatch. In this work, we analyze the impact of this mismatch on policy gradient methods. Specifically, we first show that in the case of tabular parameterizations, the biased gradient induced by the mismatch still yields a valid first-order characterization of global optimality. Then, we extend this analysis to more general parameterizations by deriving explicit bounds on both the state distribution mismatch and the resulting gradient mismatch in episodic and continuing MDPs, which are shown to vanish at least linearly as the discount factor approaches one. Building on these bounds, we further establish guarantees for the biased policy gradient iterates, showing that they approach approximate stationary points with respect to the exact gradient, with asymptotic residuals depending on the discount factor. Our findings offer insights into the robustness of policy gradient methods as well as the gap between theoretical foundations and practical implementations.
format Preprint
id arxiv_https___arxiv_org_abs_2503_22244
institution arXiv
publishDate 2025
record_format arxiv
spellingShingle Analysis of On-policy Policy Gradient Methods under the Distribution Mismatch
Wang, Weizhen
He, Jianping
Duan, Xiaoming
Machine Learning
Optimization and Control
Policy gradient methods are one of the most successful approaches for solving challenging reinforcement learning problems. Despite their empirical successes, many state-of-the-art policy gradient algorithms for discounted problems deviate from the theoretical policy gradient theorem due to the existence of a distribution mismatch. In this work, we analyze the impact of this mismatch on policy gradient methods. Specifically, we first show that in the case of tabular parameterizations, the biased gradient induced by the mismatch still yields a valid first-order characterization of global optimality. Then, we extend this analysis to more general parameterizations by deriving explicit bounds on both the state distribution mismatch and the resulting gradient mismatch in episodic and continuing MDPs, which are shown to vanish at least linearly as the discount factor approaches one. Building on these bounds, we further establish guarantees for the biased policy gradient iterates, showing that they approach approximate stationary points with respect to the exact gradient, with asymptotic residuals depending on the discount factor. Our findings offer insights into the robustness of policy gradient methods as well as the gap between theoretical foundations and practical implementations.
title Analysis of On-policy Policy Gradient Methods under the Distribution Mismatch
topic Machine Learning
Optimization and Control
url https://arxiv.org/abs/2503.22244