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ICML 2018

Policy Optimization as Wasserstein Gradient Flows

Conference Paper Accepted Paper Artificial Intelligence ยท Machine Learning

Abstract

Policy optimization is a core component of reinforcement learning (RL), and most existing RL methods directly optimize parameters of a policy based on maximizing the expected total reward, or its surrogate. Though often achieving encouraging empirical success, its correspondence to policy-distribution optimization has been unclear mathematically. We place policy optimization into the space of probability measures, and interpret it as Wasserstein gradient flows. On the probability-measure space, under specified circumstances, policy optimization becomes convex in terms of distribution optimization. To make optimization feasible, we develop efficient algorithms by numerically solving the corresponding discrete gradient flows. Our technique is applicable to several RL settings, and is related to many state-of-the-art policy-optimization algorithms. Specifically, we define gradient flows on both the parameter-distribution space and policy-distribution space, leading to what we term indirect-policy and direct-policy learning frameworks, respectively. Extensive experiments verify the effectiveness of our framework, often obtaining better performance compared to related algorithms.

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Context

Venue
International Conference on Machine Learning
Archive span
1993-2025
Indexed papers
16471
Paper id
117519392353434284