2024
DOI: 10.1007/s11063-024-11632-x
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Hierarchical Reinforcement Learning from Demonstration via Reachability-Based Reward Shaping

Xiaozhu Gao,
Jinhui Liu,
Bo Wan
et al.

Abstract: Hierarchical reinforcement learning (HRL) has achieved remarkable success and significant progress in complex and long-term decision-making problems. However, HRL training typically entails substantial computational costs and an enormous number of samples. One effective approach to tackle this challenge is hierarchical reinforcement learning from demonstrations (HRLfD), which leverages demonstrations to expedite the training process of HRL. The effectiveness of HRLfD is contingent upon the quality of the demon… Show more

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