2022
DOI: 10.48550/arxiv.2202.08266
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Open-Ended Reinforcement Learning with Neural Reward Functions

Abstract: Inspired by the great success of unsupervised learning in Computer Vision and Natural Language Processing, the Reinforcement Learning community has recently started to focus more on unsupervised discovery of skills. Most current approaches, like DIAYN or DADS, optimize some form of mutual information objective. We propose a different approach that uses reward functions encoded by neural networks. These are trained iteratively to reward more complex behavior. In high-dimensional robotic environments our approac… Show more

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References 46 publications
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