A Structured Prediction Approach for Generalization in Cooperative Multi-Agent Reinforcement Learning
Carion, Nicolas, Usunier, Nicolas, Synnaeve, Gabriel, Lazaric, Alessandro
–Neural Information Processing Systems
Effective coordination is crucial to solve multi-agent collaborative (MAC) problems. While centralized reinforcement learning methods can optimally solve small MAC instances, they do not scale to large problems and they fail to generalize to scenarios different from those seen during training. In this paper, we consider MAC problems with some intrinsic notion of locality (e.g., geographic proximity) such that interactions between agents and tasks are locally limited. By leveraging this property, we introduce a novel structured prediction approach to assign agents to tasks. At each step, the assignment is obtained by solving a centralized optimization problem (the inference procedure) whose objective function is parameterized by a learned scoring model.
Neural Information Processing Systems
Mar-18-2020, 23:48:18 GMT
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