Model-Based Graph Reinforcement Learning for Inductive Traffic Signal Control
François-Xavier Devailly,
Denis Larocque,
Laurent Charlin
Abstract:We introduce MuJAM, an adaptive traffic signal control method which leverages model-based reinforcement learning to 1) extend recent generalization efforts (to road network architectures and traffic distributions) further by allowing a generalization to the controllers' constraints (cyclic and acyclic policies), 2) improve performance and data efficiency over related model-free approaches, and 3) enable explicit coordination at scale for the first time. In a zero-shot transfer setting involving both road netwo… Show more
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