Exploring Progress in Multivariate Time Series Forecasting: Comprehensive Benchmarking and Heterogeneity Analysis
Zezhi Shao(University of Chinese Academy of Sciences), Xueqi Cheng(Chinese Academy of Sciences), Christian S. Jensen(Aalborg University), Gao Cong(Nanyang Technological University), Di Yao(Chinese Academy of Sciences), Xin Cao(UNSW Sydney), Chengqing Yu(Chinese Academy of Sciences), Wei Wei(Huazhong University of Science and Technology), Zhao Zhang(Chinese Academy of Sciences), Fei Wang(Chinese Academy of Sciences), Tao Sun(Chinese Academy of Sciences), Yongjun Xu(Chinese Academy of Sciences), Guangyin Jin(National University of Defense Technology)
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