A spatiotemporal graph generative adversarial networks for short-term passenger flow prediction in urban rail transit systems
Jinlei Zhang(Beijing Jiaotong University), Jianguo Qi(Beijing Jiaotong University), Guangyin Jin(National University of Defense Technology), Lixing Yang(Beijing Jiaotong University), Shuxin Zhang(Beijing Jiaotong University), Hua Li(Fujian Agriculture and Forestry University)
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