Revisiting Policy Gradients for Restricted Policy Classes: Escaping Myopic Local Optima with $k$-step Policy Gradients
Abstract
This work revisits standard policy gradient methods used on restricted policy classes, which are known to get stuck in suboptimal critical points. We identify an important cause for this phenomenon to be that the policy gradient is itself fundamentally myopic, i.e. it only improves the policy based on the one-step $Q$-function. In this work, we propose a generalized $k$-step policy gradient method that couples the randomness within a $k$-step time window and can escape the myopic local optima in...
Description / Details
This work revisits standard policy gradient methods used on restricted policy classes, which are known to get stuck in suboptimal critical points. We identify an important cause for this phenomenon to be that the policy gradient is itself fundamentally myopic, i.e. it only improves the policy based on the one-step -function. In this work, we propose a generalized -step policy gradient method that couples the randomness within a -step time window and can escape the myopic local optima in MDPs with restricted policy classes. We show this new method is theoretically guaranteed to converge to a solution that is exponentially close in performance to the optimal deterministic policy with respect to . Further, we show projected gradient descent and mirror descent with this -step policy gradient can achieve this exponential guarantee in iterations, despite only assuming smoothness and differentiability of the value function. This will provide near optimal solutions to previously elusive applications like state aggregation and partially observable cooperative multi-agent settings. Moreover, our bounds avoid the ubiquitous distribution mismatch factors and enabling the -step policy gradient method to escape suboptimal critical points that emerge from poor exploration in fully observable settings.
Source: arXiv:2605.10909v1 - http://arxiv.org/abs/2605.10909v1 PDF: https://arxiv.org/pdf/2605.10909v1 Original Link: http://arxiv.org/abs/2605.10909v1
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May 12, 2026
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