Kang Wang, Zhishu Shen, Zhenwei Wang, Tiehua Zhang
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Towards Multi-agent Policy-based Directed Hypergraph Learning for Traffic Signal Control
Deep reinforcement learning (DRL) methods that incorporate graph neural
networks (GNNs) have been extensively studied for intelligent traffic signal
control, which aims to coordinate traffic signals effectively across multiple
intersections. Despite this progress, the standard graph learning used in these
methods still struggles to capture higher-order correlations in real-world
traffic flow. In this paper, we propose a multi-agent proximal policy
optimization framework DHG-PPO, which incorporates PPO and directed hypergraph
module to extract the spatio-temporal attributes of the road networks. DHG-PPO
enables multiple agents to ingeniously interact through the dynamical
construction of hypergraph. The effectiveness of DHG-PPO is validated in terms
of average travel time and throughput against state-of-the-art baselines
through extensive experiments.