Multi-Objective Reinforcement Learning with Max-Min Criterion: AGame-Theoretic Approach

Neural Information Processing Systems 

In this paper, we propose a provably convergent and practical framework for multi-objective reinforcement learning with max-min criterion. From a game-theoretic perspective, we reformulate max-min multi-objective reinforcement learning as a two-player zero-sum regularized continuous game and introduce an efficient algorithm based on mirror descent.

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