Robust Reinforcement Learning Under Minimax Regret for Green Security
Lily Xu,
Andrew Perrault,
Fei Fang
et al.
Abstract:Green security domains feature defenders who plan patrols in the face of uncertainty about the adversarial behavior of poachers, illegal loggers, and illegal fishers. Importantly, the deterrence effect of patrols on adversaries' future behavior makes patrol planning a sequential decision-making problem. Therefore, we focus on robust sequential patrol planning for green security following the minimax regret criterion, which has not been considered in the literature. We formulate the problem as a game between th… Show more
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