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Cross-modal missing time-series imputation using dense spatio-temporal transformer nets.
Qian, Xusheng; Zhang, Teng; Miao, Meng; Xu, Gaojun; Zhang, Xuancheng; Yu, Wenwu; Chen, Duxin.
Afiliação
  • Qian X; State Grid Jiangsu Electric Power Company Limited Marketing Service Center, Nanjing 210019, China.
  • Zhang T; State Grid Jiangsu Electric Power Company Limited Marketing Service Center, Nanjing 210019, China.
  • Miao M; State Grid Jiangsu Electric Power Company Limited Marketing Service Center, Nanjing 210019, China.
  • Xu G; State Grid Jiangsu Electric Power Company Limited Marketing Service Center, Nanjing 210019, China.
  • Zhang X; State Grid Jiangsu Electric Power Company Limited Marketing Service Center, Nanjing 210019, China.
  • Yu W; Jiangsu Key Laboratory of Networked Collective Intelligence, School of Mathematics, Southeast University, Nanjing 211189, China.
  • Chen D; Jiangsu Key Laboratory of Networked Collective Intelligence, School of Mathematics, Southeast University, Nanjing 211189, China.
Math Biosci Eng ; 21(4): 4989-5006, 2024 Mar 01.
Article em En | MEDLINE | ID: mdl-38872523
ABSTRACT
Due to irregular sampling or device failure, the data collected from sensor network has missing value, that is, missing time-series data occurs. To address this issue, many methods have been proposed to impute random or non-random missing data. However, the imputation accuracy of these methods are not accurate enough to be applied, especially in the case of complete data missing (CDM). Thus, we propose a cross-modal method to impute time-series missing data by dense spatio-temporal transformer nets (DSTTN). This model embeds spatial modal data into time-series data by stacked spatio-temporal transformer blocks and deployment of dense connections. It adopts cross-modal constraints, a graph Laplacian regularization term, to optimize model parameters. When the model is trained, it recovers missing data finally by an end-to-end imputation pipeline. Various baseline models are compared by sufficient experiments. Based on the experimental results, it is verified that DSTTN achieves state-of-the-art imputation performance in the cases of random and non-random missing. Especially, the proposed method provides a new solution to the CDM problem.
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Texto completo: 1 Base de dados: MEDLINE Idioma: En Ano de publicação: 2024 Tipo de documento: Article

Texto completo: 1 Base de dados: MEDLINE Idioma: En Ano de publicação: 2024 Tipo de documento: Article