2022
DOI: 10.48550/arxiv.2205.00824
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Exploration in Deep Reinforcement Learning: A Survey

Pawel Ladosz,
Lilian Weng,
Minwoo Kim
et al.

Abstract: This paper reviews exploration techniques in deep reinforcement learning. Exploration techniques are of primary importance when solving sparse reward problems. In sparse reward problems, the reward is rare, which means that the agent will not find the reward often by acting randomly. In such a scenario, it is challenging for reinforcement learning to learn rewards and actions association. Thus more sophisticated exploration methods need to be devised. This review provides a comprehensive overview of existing e… Show more

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