The Max-Min Formulation of Multi-Objective Reinforcement Learning: From Theory to a Model-Free Algorithm
Park, Giseung, Byeon, Woohyeon, Kim, Seongmin, Havakuk, Elad, Leshem, Amir, Sung, Youngchul
–arXiv.org Artificial Intelligence
In this paper, we consider multi-objective reinforcement learning, which arises in many real-world problems with multiple optimization goals. We approach the problem with a max-min framework focusing on fairness among the multiple goals and develop a relevant theory and a practical model-free algorithm under the max-min framework. The developed theory provides a theoretical advance in multi-objective reinforcement learning, and the proposed algorithm demonstrates a notable performance improvement over existing baseline methods.
arXiv.org Artificial Intelligence
Jun-11-2024
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