Short-term multi-step-ahead sector-based traffic flow prediction based on the attention-enhanced graph convolutional LSTM network (AGC-LSTM)
Ying Zhang(Traffic Management Research Institute), Dabin Xue(Hong Kong Polytechnic University), Sameer Alam(Nanyang Technological University), Linghui Zhang(Traffic Management Research Institute), Weiwei Jiang(Beijing University of Posts and Telecommunications), Shimin Xu(Traffic Management Research Institute)
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