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MagiNet: Mask-Aware Graph Imputation Network for Incomplete Traffic Data

Authors :
Zhou, Jianping
Lu, Bin
Liu, Zhanyu
Pan, Siyu
Feng, Xuejun
Wei, Hua
Zheng, Guanjie
Wang, Xinbing
Zhou, Chenghu
Publication Year :
2024

Abstract

Due to detector malfunctions and communication failures, missing data is ubiquitous during the collection of traffic data. Therefore, it is of vital importance to impute the missing values to facilitate data analysis and decision-making for Intelligent Transportation System (ITS). However, existing imputation methods generally perform zero pre-filling techniques to initialize missing values, introducing inevitable noises. Moreover, we observe prevalent over-smoothing interpolations, falling short in revealing the intrinsic spatio-temporal correlations of incomplete traffic data. To this end, we propose Mask-Aware Graph imputation Network: MagiNet. Our method designs an adaptive mask spatio-temporal encoder to learn the latent representations of incomplete data, eliminating the reliance on pre-filling missing values. Furthermore, we devise a spatio-temporal decoder that stacks multiple blocks to capture the inherent spatial and temporal dependencies within incomplete traffic data, alleviating over-smoothing imputation. Extensive experiments demonstrate that our method outperforms state-of-the-art imputation methods on five real-world traffic datasets, yielding an average improvement of 4.31% in RMSE and 3.72% in MAPE.<br />Comment: 19 pages, 7 figures

Details

Database :
arXiv
Publication Type :
Report
Accession number :
edsarx.2406.03511
Document Type :
Working Paper