Computer Science > Machine Learning
[Submitted on 24 Jan 2022 (v1), last revised 29 Nov 2022 (this version, v9)]
Title:Homotopic Policy Mirror Descent: Policy Convergence, Implicit Regularization, and Improved Sample Complexity
View PDFAbstract:We propose a new policy gradient method, named homotopic policy mirror descent (HPMD), for solving discounted, infinite horizon MDPs with finite state and action spaces. HPMD performs a mirror descent type policy update with an additional diminishing regularization term, and possesses several computational properties that seem to be new in the literature. We first establish the global linear convergence of HPMD instantiated with Kullback-Leibler divergence, for both the optimality gap, and a weighted distance to the set of optimal policies. Then local superlinear convergence is obtained for both quantities without any assumption. With local acceleration and diminishing regularization, we establish the first result among policy gradient methods on certifying and characterizing the limiting policy, by showing, with a non-asymptotic characterization, that the last-iterate policy converges to the unique optimal policy with the maximal entropy. We then extend all the aforementioned results to HPMD instantiated with a broad class of decomposable Bregman divergences, demonstrating the generality of the these computational properties. As a by product, we discover the finite-time exact convergence for some commonly used Bregman divergences, implying the continuing convergence of HPMD to the limiting policy even if the current policy is already optimal. Finally, we develop a stochastic version of HPMD and establish similar convergence properties. By exploiting the local acceleration, we show that for small optimality gap, a better than $\tilde{\mathcal{O}}(\left|\mathcal{S}\right| \left|\mathcal{A}\right| / \epsilon^2)$ sample complexity holds with high probability, when assuming a generative model for policy evaluation.
Submission history
From: Yan Li [view email][v1] Mon, 24 Jan 2022 04:54:58 UTC (438 KB)
[v2] Tue, 25 Jan 2022 18:25:18 UTC (504 KB)
[v3] Thu, 27 Jan 2022 17:51:12 UTC (507 KB)
[v4] Sun, 30 Jan 2022 05:34:08 UTC (516 KB)
[v5] Sat, 21 May 2022 04:00:24 UTC (651 KB)
[v6] Tue, 31 May 2022 17:25:24 UTC (590 KB)
[v7] Thu, 2 Jun 2022 04:33:21 UTC (591 KB)
[v8] Fri, 3 Jun 2022 17:00:49 UTC (593 KB)
[v9] Tue, 29 Nov 2022 17:00:55 UTC (1,967 KB)
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