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Behavior Contrastive Learning for Unsupervised Skill Discovery

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In reinforcement learning, unsupervised skill discovery aims to learn diverse skills without extrinsic rewards. Previous methods discover skills by maximizing the mutual information (MI) between states and skills. However, such an MI objective tends to learn simple and static skills and may hinder exploration. In this paper, we propose a novel unsupervised skill discovery method through contrastive learning among behaviors, which makes the agent produce similar behaviors for the same skill and diverse behaviors for different skills. Under mild assumptions, our objective maximizes the MI between different behaviors based on the same skill, which serves as an upper bound of the previous MI objective. Meanwhile, our method implicitly increases the state entropy to obtain better state coverage. We evaluate our method on challenging mazes and continuous control tasks. The results show that our method generates diverse and far-reaching skills, and also obtains competitive performance in downstream tasks compared to the state-of-the-art methods.

Rushuai Yang, Chenjia Bai, Hongyi Guo, Siyuan Li, Bin Zhao, Zhen Wang, Peng Liu, Xuelong Li• 2023

Related benchmarks

TaskDatasetResultRank
State ExplorationMaze2D Square-b
State Coverage Ratio48
22
State ExplorationMaze2D Square-a
State Coverage Ratio52
11
State ExplorationMaze2D Square-c
State Coverage Ratio43
11
State ExplorationMaze2D Square-tree
State Coverage Ratio37
11
State ExplorationMaze2D Square-d
State Coverage Ratio0.47
11
State ExplorationMaze2D Corridor2
State Coverage Ratio67
11
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