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Main Authors: Gao, Ji, Ju, Caleb, Lan, Guanghui, Tong, Zhaohui
Format: Preprint
Published: 2026
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Online Access:https://arxiv.org/abs/2603.10199
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author Gao, Ji
Ju, Caleb
Lan, Guanghui
Tong, Zhaohui
author_facet Gao, Ji
Ju, Caleb
Lan, Guanghui
Tong, Zhaohui
contents Policy Dual Averaging (PDA) offers a principled Policy Mirror Descent (PMD) framework that more naturally admits value function approximation than standard PMD, enabling the use of approximate advantage (or Q-) functions while retaining strong convergence guarantees. However, applying PDA in continuous state and action spaces remains computationally challenging, since action selection involves solving an optimization sub-problem at each decision step. In this paper, we propose \textit{actor-accelerated PDA}, which uses a learned policy network to approximate the solution of the optimization sub-problems, yielding faster runtimes while maintaining convergence guarantees. We provide a theoretical analysis that quantifies how actor approximation error impacts the convergence of PDA under suitable assumptions. We then evaluate its performance on several benchmarks in robotics, control, and operations research problems. Actor-accelerated PDA achieves superior performance compared to popular on-policy baselines such as Proximal Policy Optimization (PPO). Overall, our results bridge the gap between the theoretical advantages of PDA and its practical deployment in continuous-action problems with function approximation.
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publishDate 2026
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spellingShingle Actor-Accelerated Policy Dual Averaging for Reinforcement Learning in Continuous Action Spaces
Gao, Ji
Ju, Caleb
Lan, Guanghui
Tong, Zhaohui
Machine Learning
Policy Dual Averaging (PDA) offers a principled Policy Mirror Descent (PMD) framework that more naturally admits value function approximation than standard PMD, enabling the use of approximate advantage (or Q-) functions while retaining strong convergence guarantees. However, applying PDA in continuous state and action spaces remains computationally challenging, since action selection involves solving an optimization sub-problem at each decision step. In this paper, we propose \textit{actor-accelerated PDA}, which uses a learned policy network to approximate the solution of the optimization sub-problems, yielding faster runtimes while maintaining convergence guarantees. We provide a theoretical analysis that quantifies how actor approximation error impacts the convergence of PDA under suitable assumptions. We then evaluate its performance on several benchmarks in robotics, control, and operations research problems. Actor-accelerated PDA achieves superior performance compared to popular on-policy baselines such as Proximal Policy Optimization (PPO). Overall, our results bridge the gap between the theoretical advantages of PDA and its practical deployment in continuous-action problems with function approximation.
title Actor-Accelerated Policy Dual Averaging for Reinforcement Learning in Continuous Action Spaces
topic Machine Learning
url https://arxiv.org/abs/2603.10199