Actor-Accelerated Policy Dual Averaging for Reinforcement Learning in Continuous Action Spaces
arXiv cs.LG / 3/12/2026
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Key Points
- The paper proposes actor-accelerated Policy Dual Averaging (PDA) that uses a learned policy network to approximate optimization sub-problems in continuous action spaces, enabling faster runtimes.
- It maintains convergence guarantees despite the approximation error introduced by the actor network.
- The authors provide a theoretical analysis quantifying how actor approximation error impacts PDA convergence under certain assumptions.
- Empirical results on robotics, control, and operations research benchmarks show actor-accelerated PDA outperforming popular on-policy baselines such as PPO.
- This work helps bridge the gap between the theoretical advantages of PDA and its practical deployment in continuous-action reinforcement learning with function approximation.
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