FACMAC: Factored multi−agent centralised policy gradients
We propose FACtored Multi-Agent Centralised policy gradients (FACMAC), a new method for cooperative multi-agent reinforcement learning in both discrete and continuous action spaces. Like MADDPG, a popular multi-agent actor-critic method, our approach uses deep deterministic policy gradients to learn...
Main Authors: | Peng, B, Rashid, T, Schroeder de Witt, CA, Kamienny, P-A, Torr, PHS, Böhmer, W, Whiteson, S |
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Format: | Conference item |
Language: | English |
Published: |
NeurIPS
2022
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