2023
DOI: 10.22541/au.168312072.24350238/v1
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An Online Hyper-volume Action Bounding Approach for Accelerating the Process of Deep Reinforcement Learning from Multiple Controllers

Abstract: This paper fuses ideas from Reinforcement Learning (RL), Learning from Demonstration (LfD), and Ensemble Learning into a single paradigm. Knowledge from a mixture of control algorithms (experts) are used to constrain the action space of the agent, enabling faster RL refining of a control policy, by avoiding unnecessary explorative actions. Domain-specific knowledge of each expert is exploited. However, the resulting policy is robust against errors of individual experts, since it is refined by a RL reward funct… Show more

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