Conservative Q-Learning for Offline Reinforcement Learning

Abstract

Effectively leveraging large, previously collected datasets in reinforcement learn- ing (RL) is a key challenge for large-scale real-world applications. Offline RL algorithms promise to learn effective policies from previously-collected, static datasets without further interaction. However, in practice, offline RL presents a major challenge, and standard off-policy RL methods can fail due to overestimation of values induced by the distributional shift between the dataset and the learned policy, especially when training on complex and multi-modal data distributions. In this paper, we propose conservative Q-learning (CQL), which aims to address these limitations by learning a conservative Q-function such that the expected value of a policy under this Q-function lower-bounds its true value. We theoretically show that CQL produces a lower bound on the value of the current policy and that it can be incorporated into a policy learning procedure with theoretical improvement guarantees. In practice, CQL augments the standard Bellman error objective with a simple Q-value regularizer which is straightforward to implement on top of existing deep Q-learning and actor-critic implementations. On both discrete and continuous control domains, we show that CQL substantially outperforms existing offline RL methods, often learning policies that attain 2-5 times higher final return, especially when learning from complex and multi-modal data distributions.

Cite

Text

Kumar et al. "Conservative Q-Learning for Offline Reinforcement Learning." Neural Information Processing Systems, 2020.

Markdown

[Kumar et al. "Conservative Q-Learning for Offline Reinforcement Learning." Neural Information Processing Systems, 2020.](https://mlanthology.org/neurips/2020/kumar2020neurips-conservative/)

BibTeX

@inproceedings{kumar2020neurips-conservative,
  title     = {{Conservative Q-Learning for Offline Reinforcement Learning}},
  author    = {Kumar, Aviral and Zhou, Aurick and Tucker, George and Levine, Sergey},
  booktitle = {Neural Information Processing Systems},
  year      = {2020},
  url       = {https://mlanthology.org/neurips/2020/kumar2020neurips-conservative/}
}