Accurately forecasting transportation demand is crucial for efficient urban traffic guidance, control and management. One solution to enhance the level of prediction accuracy is to leverage graph convolutional networks (GCN), a neural network based modelling approach with the ability to process data contained in graph based structures. As a powerful extension of GCN, a spatial-temporal graph convolutional network (ST-GCN) aims to capture the relationship of data contained in the graphical nodes across both spatial and temporal dimensions, which presents a novel deep learning paradigm for the analysis of complex time-series data that also involves spatial information as present in transportation use cases. In this paper, we present an Attention-based ST-GCN (AST-GCN) for predicting the number of available bikes in bike-sharing systems in cities, where the attention-based mechanism is introduced to further improve the performance of a ST-GCN. Furthermore, we also discuss the impacts of different modelling methods of adjacency matrices on the proposed architecture. Our experimental results are presented using two real-world datasets, Dublinbikes and NYC-Citi Bike, to illustrate the efficacy of our proposed model which outperforms the majority of existing approaches.
翻译:准确预测交通需求对于高效的城市交通指导、控制和管理至关重要。提高预测准确度的一种解决办法是利用图形革命网络(GCN),这是一种神经网络建模方法,能够处理图表结构中所含的数据。GCN的强大延伸,是一个空间时空图形革命网络(ST-GCN),旨在捕捉图形节点中包含的数据在空间和时间两个层面之间的关系,它为分析复杂的时间序列数据提供了一个全新的深层次学习模式,这些数据也涉及运输使用案例中的现有空间信息。在本文件中,我们介绍了基于注意的ST-GCN(ST-GCN),用于预测城市自行车共享系统中可用的自行车数量,其中引入了关注机制,以进一步改善ST-GCN的性能。此外,我们还讨论了相邻矩阵不同建模方法对拟议架构的影响。我们实验结果的介绍使用了两种真实世界数据集,即都柏林和纽约-比克,用以说明我们拟议的多数模式的实效。