Control-Tutored Reinforcement Learning: an application to the Herding Problem

11/26/2019
by   Francesco De Lellis, et al.
0

In this extended abstract we introduce a novel control-tutored Q-learning approach (CTQL) as part of the ongoing effort in developing model-based and safe RL for continuous state spaces. We validate our approach by applying it to a challenging multi-agent herding control problem.

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