Traffic Prediction Model Based on Spatio-temporal Graph Attention Network

Jing Chen, Linkai Wang, Wen Wang, Ruizhuo Song
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Abstract

Smart transportation is an important part of building a smart city, and accurate traffic forecasting is crucial for citizen travel and urban construction. Aiming at the temporal and spatial dimensions in traffic forecasting, we focus on the extraction methods of the correlation between the two dimensions, and propose a new prediction model of the spatio-temporal graph attention network from the temporal correlation and the spatial correlation. The structure of the model is studied and analyzed. Finally, experiments are carried out on the mainstream traffic data sets, and by comparing with other prediction models, it is concluded that the evaluation indicators of the prediction model are better than other models.
基于时空图注意力网络的交通预测模型
智慧交通是智慧城市建设的重要组成部分,准确的交通预测对市民出行和城市建设至关重要。针对交通预测中的时间维度和空间维度,重点研究了两个维度之间相关性的提取方法,并从时间相关性和空间相关性两方面提出了一种新的时空图注意力网络预测模型。对模型的结构进行了研究和分析。最后,在主流交通数据集上进行实验,通过与其他预测模型的对比,得出预测模型的评价指标优于其他模型的结论。
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