MinglingForesightwithImagination: Model-Based CooperativeMulti-AgentReinforcementLearning
–Neural Information Processing Systems
Thispaperproposes animplicit model-based multi-agent reinforcement learning method based onvalue decomposition methods. Under this method, agents can interact with thelearned virtual environment and evaluate thecurrent state value according to imagined future states in the latent space, making agents have the foresight. Our approach can be applied toanymulti-agent value decomposition method.
Neural Information Processing Systems
Feb-8-2026, 18:05:49 GMT
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