Deep Reinforcement Learning with Robust and Smooth Policy
This work addresses the problem of high data requirements in RL for researchers and practitioners, though it is incremental as it builds on existing methods like TRPO and DDPG.
The paper tackles the sample inefficiency of deep reinforcement learning in continuous state spaces by proposing a smoothness-inducing regularization framework (SR²L) that learns smooth policies, resulting in improved sample efficiency and robustness against state measurement errors.
Deep reinforcement learning (RL) has achieved great empirical successes in various domains. However, the large search space of neural networks requires a large amount of data, which makes the current RL algorithms not sample efficient. Motivated by the fact that many environments with continuous state space have smooth transitions, we propose to learn a smooth policy that behaves smoothly with respect to states. We develop a new framework -- \textbf{S}mooth \textbf{R}egularized \textbf{R}einforcement \textbf{L}earning ($\textbf{SR}^2\textbf{L}$), where the policy is trained with smoothness-inducing regularization. Such regularization effectively constrains the search space, and enforces smoothness in the learned policy. Moreover, our proposed framework can also improve the robustness of policy against measurement error in the state space, and can be naturally extended to distribubutionally robust setting. We apply the proposed framework to both on-policy (TRPO) and off-policy algorithm (DDPG). Through extensive experiments, we demonstrate that our method achieves improved sample efficiency and robustness.