Deep Multi-View Spatiotemporal Virtual Graph Neural Network for Significant Citywide Ride-hailing Demand Prediction
Guangyin Jin(National University of Defense Technology), Jincai Huang(National University of Defense Technology), Zhexu Xi(University of Bristol), Yanghe Feng(National University of Defense Technology), Hengyu Sha(National University of Defense Technology)
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