LGSep 29, 2022

Offline Reinforcement Learning via High-Fidelity Generative Behavior Modeling

Tsinghua
arXiv:2209.14548v2189 citationsh-index: 51
Originality Incremental advance
AI Analysis

This work addresses a key limitation in offline RL for improving policy safety and performance, though it is incremental by building on existing generative modeling techniques.

The paper tackles the problem of offline reinforcement learning where previous methods might select unseen actions due to limited policy expressivity, and it proposes a decoupled generative approach that achieves competitive or superior performance on D4RL datasets, particularly in complex tasks like AntMaze.

In offline reinforcement learning, weighted regression is a common method to ensure the learned policy stays close to the behavior policy and to prevent selecting out-of-sample actions. In this work, we show that due to the limited distributional expressivity of policy models, previous methods might still select unseen actions during training, which deviates from their initial motivation. To address this problem, we adopt a generative approach by decoupling the learned policy into two parts: an expressive generative behavior model and an action evaluation model. The key insight is that such decoupling avoids learning an explicitly parameterized policy model with a closed-form expression. Directly learning the behavior policy allows us to leverage existing advances in generative modeling, such as diffusion-based methods, to model diverse behaviors. As for action evaluation, we combine our method with an in-sample planning technique to further avoid selecting out-of-sample actions and increase computational efficiency. Experimental results on D4RL datasets show that our proposed method achieves competitive or superior performance compared with state-of-the-art offline RL methods, especially in complex tasks such as AntMaze. We also empirically demonstrate that our method can successfully learn from a heterogeneous dataset containing multiple distinctive but similarly successful strategies, whereas previous unimodal policies fail.

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