2023
DOI: 10.48550/arxiv.2301.01997
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Data-Driven Inverse Reinforcement Learning for Expert-Learner Zero-Sum Games

Abstract: In this paper, we formulate inverse reinforcement learning (IRL) as an expert-learner interaction whereby the optimal performance intent of an expert or target agent is unknown to a learner agent. The learner observes the states and controls of the expert and hence seeks to reconstruct the expert's cost function intent and thus mimics the expert's optimal response. Next, we add non-cooperative disturbances that seek to disrupt the learning and stability of the learner agent. This leads to the formulation of a … Show more

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