AST-GCN: Attribute-Augmented Spatiotemporal Graph Convolutional Network
for Traffic Forecasting
- URL: http://arxiv.org/abs/2011.11004v1
- Date: Sun, 22 Nov 2020 12:49:55 GMT
- Title: AST-GCN: Attribute-Augmented Spatiotemporal Graph Convolutional Network
for Traffic Forecasting
- Authors: Jiawei Zhu, Chao Tao, Hanhan Deng, Ling Zhao, Pu Wang, Tao Lin,
Haifeng Li
- Abstract summary: We propose attribute-augmentedtemporal graph convolutional network (AST-GCN) to integrate external factors into traffic forecasting schemes.
Experiments show the effectiveness of considering external information on traffic forecasting tasks when compared to traditional traffic prediction methods.
- Score: 12.284512000306314
- License: http://creativecommons.org/licenses/by-nc-nd/4.0/
- Abstract: Traffic forecasting is a fundamental and challenging task in the field of
intelligent transportation. Accurate forecasting not only depends on the
historical traffic flow information but also needs to consider the influence of
a variety of external factors, such as weather conditions and surrounding POI
distribution. Recently, spatiotemporal models integrating graph convolutional
networks and recurrent neural networks have become traffic forecasting research
hotspots and have made significant progress. However, few works integrate
external factors. Therefore, based on the assumption that introducing external
factors can enhance the spatiotemporal accuracy in predicting traffic and
improving interpretability, we propose an attribute-augmented spatiotemporal
graph convolutional network (AST-GCN). We model the external factors as dynamic
attributes and static attributes and design an attribute-augmented unit to
encode and integrate those factors into the spatiotemporal graph convolution
model. Experiments on real datasets show the effectiveness of considering
external information on traffic forecasting tasks when compared to traditional
traffic prediction methods. Moreover, under different attribute-augmented
schemes and prediction horizon settings, the forecasting accuracy of the
AST-GCN is higher than that of the baselines.
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