Energy-Guided Diffusion Sampling for Offline-to-Online Reinforcement Learning
This addresses inefficiency in RL for domains with expensive data acquisition, though it is incremental as it builds on existing offline-to-online methods.
The paper tackles the problem of data distribution shift in offline-to-online reinforcement learning by introducing EDIS, an energy-guided diffusion sampling method that leverages offline data to enhance online fine-tuning, achieving a 20% average performance improvement on benchmark environments.
Combining offline and online reinforcement learning (RL) techniques is indeed crucial for achieving efficient and safe learning where data acquisition is expensive. Existing methods replay offline data directly in the online phase, resulting in a significant challenge of data distribution shift and subsequently causing inefficiency in online fine-tuning. To address this issue, we introduce an innovative approach, \textbf{E}nergy-guided \textbf{DI}ffusion \textbf{S}ampling (EDIS), which utilizes a diffusion model to extract prior knowledge from the offline dataset and employs energy functions to distill this knowledge for enhanced data generation in the online phase. The theoretical analysis demonstrates that EDIS exhibits reduced suboptimality compared to solely utilizing online data or directly reusing offline data. EDIS is a plug-in approach and can be combined with existing methods in offline-to-online RL setting. By implementing EDIS to off-the-shelf methods Cal-QL and IQL, we observe a notable 20% average improvement in empirical performance on MuJoCo, AntMaze, and Adroit environments. Code is available at \url{https://github.com/liuxhym/EDIS}.