ST-GIN: An Uncertainty Quantification Approach in Traffic Data
Imputation with Spatio-temporal Graph Attention and Bidirectional Recurrent
United Neural Networks
- URL: http://arxiv.org/abs/2305.06480v3
- Date: Sat, 9 Sep 2023 19:41:38 GMT
- Title: ST-GIN: An Uncertainty Quantification Approach in Traffic Data
Imputation with Spatio-temporal Graph Attention and Bidirectional Recurrent
United Neural Networks
- Authors: Zepu Wang, Dingyi Zhuang, Yankai Li, Jinhua Zhao, Peng Sun, Shenhao
Wang, Yulin Hu
- Abstract summary: We propose an innovative deep learning approach for imputing missing data.
A graph attention architecture is employed to capture the spatial correlations present in traffic data.
A bidirectional neural network is utilized to learn temporal information.
- Score: 18.66289473659838
- License: http://creativecommons.org/licenses/by/4.0/
- Abstract: Traffic data serves as a fundamental component in both research and
applications within intelligent transportation systems. However, real-world
transportation data, collected from loop detectors or similar sources, often
contains missing values (MVs), which can adversely impact associated
applications and research. Instead of discarding this incomplete data,
researchers have sought to recover these missing values through numerical
statistics, tensor decomposition, and deep learning techniques. In this paper,
we propose an innovative deep learning approach for imputing missing data. A
graph attention architecture is employed to capture the spatial correlations
present in traffic data, while a bidirectional neural network is utilized to
learn temporal information. Experimental results indicate that our proposed
method outperforms all other benchmark techniques, thus demonstrating its
effectiveness.
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