Author:
Wang Yifan,Bu Fanliang,Lv Xiaojun,Hou Zhiwen,Bu Lingbin,Meng Fanxu,Wang Zhongqing
Abstract
AbstractAlthough numerous spatiotemporal approaches have been presented to address the problem of missing spatiotemporal data, there are still limitations in concurrently capturing the underlying spatiotemporal dependence of spatiotemporal graph data. Furthermore, most imputation methods miss the hidden dynamic connection associations that exist between graph nodes over time. To address the aforementioned spatiotemporal data imputation challenge, we present an attention-based message passing and dynamic graph convolution network (ADGCN). Specifically, this paper uses attention mechanisms to unify temporal and spatial continuity and aggregate node neighbor information in multiple directions. Furthermore, a dynamic graph convolution module is designed to capture constantly changing spatial correlations in sensors utilizing a new dynamic graph generation method with gating to transmit node information. Extensive imputation tests in the air quality and traffic flow domains were carried out on four real missing data sets. Experiments show that the ADGCN outperforms the state-of-the-art baseline.
Funder
National Natural Science Foundation of China-China State Railway Group Co., Ltd. Railway Basic Research Joint Fund
Publisher
Springer Science and Business Media LLC
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