Model-based reinforcement learning for offline zero-sum Markov games
| Year of publication: |
2024
|
|---|---|
| Authors: | Yan, Yuling ; Li, Gen ; Chen, Yuxin ; Fan, Jianqing |
| Published in: |
Operations research. - Linthicum, Md. : INFORMS, ISSN 1526-5463, ZDB-ID 2019440-7. - Vol. 72.2024, 6, p. 2430-2445
|
| Subject: | curse of multiple agents | Machine Learning and Data Science | minimax optimality | model-based approach | Nash equilibrium | offline RL | unilateral coverage | zero-sum Markov games | Markov-Kette | Markov chain | Künstliche Intelligenz | Artificial intelligence | Spieltheorie | Game theory | Nash-Gleichgewicht | Lernprozess | Learning process |
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