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PMIC: Improving Multi-Agent Reinforcement Learning with Progressive Mutual Information Collaboration.

, , , , , , , , , and . ICML, volume 162 of Proceedings of Machine Learning Research, page 12979-12997. PMLR, (2022)

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A Unified Framework for Layout Pattern Analysis With Deep Causal Estimation., , , , , , , , and . IEEE Trans. Comput. Aided Des. Integr. Circuits Syst., 42 (4): 1199-1211 (April 2023)Neighborhood Cognition Consistent Multi-Agent Reinforcement Learning., , , , , , , and . CoRR, (2019)Plan To Predict: Learning an Uncertainty-Foreseeing Model for Model-Based Reinforcement Learning., , , , and . CoRR, (2023)Structure Aware Incremental Learning with Personalized Imitation Weights for Recommender Systems., , , , , , and . AAAI, page 4711-4719. AAAI Press, (2023)Foresee then Evaluate: Decomposing Value Estimation with Latent Future Prediction., , , , , , , , and . AAAI, page 9834-9842. AAAI Press, (2021)Towards Effective Context for Meta-Reinforcement Learning: an Approach based on Contrastive Learning., , , , , , and . AAAI, page 7457-7465. AAAI Press, (2021)A Unified Framework for Layout Pattern Analysis with Deep Causal Estimation., , , , , , , , and . ICCAD, page 1-9. IEEE, (2021)Off-Policy Training for Truncated TD(λ) Boosted Soft Actor-Critic., , , , , , and . PRICAI (3), volume 13033 of Lecture Notes in Computer Science, page 46-59. Springer, (2021)SEIHAI: A Sample-Efficient Hierarchical AI for the MineRL Competition., , , , , , , , and . DAI, volume 13170 of Lecture Notes in Computer Science, page 38-51. Springer, (2021)Strategy and Fairness in Repeated Two-agent Interaction., and . ICTAI (2), page 3-6. IEEE Computer Society, (2010)978-0-7695-4263-8.