LGAug 18, 2022

A Review of Uncertainty for Deep Reinforcement Learning

arXiv:2208.09052v183 citationsh-index: 6
Originality Synthesis-oriented
AI Analysis

It centralizes disparate results to promote future research in uncertainty handling for deep reinforcement learning, which is an incremental contribution.

The paper reviews existing techniques for uncertainty-aware deep reinforcement learning, highlighting empirical benefits on various tasks, but does not present new results or concrete numbers.

Uncertainty is ubiquitous in games, both in the agents playing games and often in the games themselves. Working with uncertainty is therefore an important component of successful deep reinforcement learning agents. While there has been substantial effort and progress in understanding and working with uncertainty for supervised learning, the body of literature for uncertainty aware deep reinforcement learning is less developed. While many of the same problems regarding uncertainty in neural networks for supervised learning remain for reinforcement learning, there are additional sources of uncertainty due to the nature of an interactable environment. In this work, we provide an overview motivating and presenting existing techniques in uncertainty aware deep reinforcement learning. These works show empirical benefits on a variety of reinforcement learning tasks. This work serves to help to centralize the disparate results and promote future research in this area.

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