Multi-weighted Graphs Learning for Passenger Count Prediction on Railway Network

Ge Hangli, Lifeng Lin, Renhe Jiang, Takashi Michikata, N. Koshizuka
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引用次数: 1

Abstract

In this study, a method of multi-weighted graphs learning for passenger count prediction in railway networks, is presented. Traffic prediction can provide significant insights for railway system optimization, urban planning, smart city development, etc. However, affected by various factors, including spatial, temporal, and other external ones, traffic prediction on railway networks remains a critical task because of the complexity of the railway networks. To achieve high learning performance of the models and discover the correlation between the models and features, we proposed various heterogenerous weighted graphs for the passenger count prediction. Six types of weight graphs, that is, connection graph, distance graph, correlation graph, and their fused weight graphs were proposed to fully construct the spatial and geometrical features within the entire railway network. Two representative types of graph neural networks, that is, the graph convolutional network (GCN) and graph attention network (GAT) were implemented for evaluation. The evaluation results demonstrate that the proposed GAT model learning on the correlation graph achieves the best performance, as it can reduce the metrics of mean absolute error (MAE), root mean square error (RSME), and mean absolute percentage error metrics (MAPE) on average by 19.7%, 6.9%, 27.9% respectively. Finally, the importance and effectiveness of the models with corresponding weight graphs were also investigated and explained. It also provides the interpretability of the traffic prediction tasks on the railway network.
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基于多加权图学习的铁路网客运量预测
本文提出了一种基于多加权图学习的铁路客运量预测方法。交通预测可以为铁路系统优化、城市规划、智慧城市发展等提供重要的见解。然而,由于铁路网络的复杂性,受空间、时间和其他外部因素的影响,铁路网络的交通预测仍然是一项重要的任务。为了提高模型的学习性能,并发现模型与特征之间的相关性,我们提出了各种非均匀加权图来预测乘客人数。提出了连接图、距离图、关联图及其融合权图等6种权图,以全面构建整个铁路网的空间和几何特征。对两种具有代表性的图神经网络,即图卷积网络(GCN)和图注意网络(GAT)进行了评价。评价结果表明,基于相关图的GAT模型学习效果最好,平均绝对误差(MAE)、均方根误差(RSME)和平均绝对百分比误差(MAPE)指标分别降低了19.7%、6.9%和27.9%。最后,对具有相应权值图的模型的重要性和有效性进行了探讨和说明。提供了铁路网交通预测任务的可解释性。
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