HUTFormer: Hierarchical U-Net transformer for long-term traffic forecasting
Zezhi Shao(University of Chinese Academy of Sciences), Yongjun Xu(Chinese Academy of Sciences), Yang Liu(Tsinghua University), Zhenghua An(Chinese Academy of Sciences), Chengqing Yu(Chinese Academy of Sciences), Yuchen Fang(University of Electronic Science and Technology of China), Fei Wang(Chinese Academy of Sciences), Guangyin Jin(National University of Defense Technology), Tao Sun(Nanjing Institute of Agricultural Mechanization), Xiaobo Qu(Tsinghua University)
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