A proof of imitation of Wasserstein inverse reinforcement learning for multi-objective optimization

Kitaoka, Akira, Eto, Riki

arXiv.org Artificial Intelligence 

We prove Wasserstein inverse reinforcement learning enables the learner's reward values to imitate the expert's reward values in a finite iteration for multi-objective optimizations. Moreover, we prove Wasserstein inverse reinforcement learning enables the learner's optimal solutions to imitate the expert's optimal solutions for multi-objective optimizations with lexicographic order.

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