LGOct 17, 2022

Boosting Offline Reinforcement Learning via Data Rebalancing

arXiv:2210.09241v129 citationsh-index: 33
Originality Incremental advance
AI Analysis

This addresses performance limitations in offline RL for AI/robotics applications, but it is incremental as it builds on existing methods with a simple modification.

The paper tackles the distributional shift problem in offline reinforcement learning by proposing a data rebalancing method that resamples transitions based on episodic returns, achieving new state-of-the-art results on the D4RL benchmark.

Offline reinforcement learning (RL) is challenged by the distributional shift between learning policies and datasets. To address this problem, existing works mainly focus on designing sophisticated algorithms to explicitly or implicitly constrain the learned policy to be close to the behavior policy. The constraint applies not only to well-performing actions but also to inferior ones, which limits the performance upper bound of the learned policy. Instead of aligning the densities of two distributions, aligning the supports gives a relaxed constraint while still being able to avoid out-of-distribution actions. Therefore, we propose a simple yet effective method to boost offline RL algorithms based on the observation that resampling a dataset keeps the distribution support unchanged. More specifically, we construct a better behavior policy by resampling each transition in an old dataset according to its episodic return. We dub our method ReD (Return-based Data Rebalance), which can be implemented with less than 10 lines of code change and adds negligible running time. Extensive experiments demonstrate that ReD is effective at boosting offline RL performance and orthogonal to decoupling strategies in long-tailed classification. New state-of-the-arts are achieved on the D4RL benchmark.

Foundations

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