Being able to predict the crowd flows in each and every part of a city, especially in irregular regions, is strategically important for traffic control, risk assessment, and public safety. However, it is very challenging because of interactions and spatial correlations between different regions. In addition, it is affected by many factors: i) multiple temporal correlations among different time intervals: closeness, period, trend; ii) complex external influential factors: weather, events; iii) meta features: time of the day, day of the week, and so on. In this paper, we formulate crowd flow forecasting in irregular regions as a spatio-temporal graph (STG) prediction problem in which each node represents a region with time-varying flows. By extending graph convolution to handle the spatial information, we propose using spatial graph convolution to build a multi-view graph convolutional network (MVGCN) for the crowd flow forecasting problem, where different views can capture different factors as mentioned above. We evaluate MVGCN using four real-world datasets (taxicabs and bikes) and extensive experimental results show that our approach outperforms the adaptations of state-of-the-art methods. And we have developed a crowd flow forecasting system for irregular regions that can now be used internally.
翻译:能够预测城市每个部分的人群流动,特别是非正规地区的人群流动,对于交通控制、风险评估和公共安全具有战略重要性,然而,由于不同区域之间的互动和空间相关关系,这一预测非常具有挑战性。此外,它还受到许多因素的影响:一)不同时间间隔之间的多重时间相关性:近距离、时间间隔、趋势;二)复杂的外部有影响因素:天气、事件;三)元特征:一天的时间、星期的一天等等。在本文中,我们将非正常地区的人群流动预测作为时空图(STG)的预测问题,其中每个节点代表一个具有时空流动的区域。通过扩大图形变异以处理空间信息,我们建议使用空间图变异来建立一个多视图图变动网络(MVGCN)来应对人群流动预测问题,其中不同的观点可以捕捉上述不同因素。我们用四个真实世界数据集(税务和自行车)来评估MVGCN, 以及广泛的实验结果显示,我们的方法已经超越了我们所开发的系统,从而可以对国内流动进行不规则的系统。