The key to traffic prediction is to accurately depict the temporal dynamics of traffic flow traveling in a road network, so it is important to model the spatial dependence of the road network. The essence of spatial dependence is to accurately describe how traffic information transmission is affected by other nodes in the road network, and the GNN-based traffic prediction model, as a benchmark for traffic prediction, has become the most common method for the ability to model spatial dependence by transmitting traffic information with the message passing mechanism. However, existing methods model a local and static spatial dependence, which cannot transmit the global-dynamic traffic information (GDTi) required for long-term prediction. The challenge is the difficulty of detecting the precise transmission of GDTi due to the uncertainty of individual transport, especially for long-term transmission. In this paper, we propose a new hypothesis\: GDTi behaves macroscopically as a transmitting causal relationship (TCR) underlying traffic flow, which remains stable under dynamic changing traffic flow. We further propose spatial-temporal Granger causality (STGC) to express TCR, which models global and dynamic spatial dependence. To model global transmission, we model the causal order and causal lag of TCRs global transmission by a spatial-temporal alignment algorithm. To capture dynamic spatial dependence, we approximate the stable TCR underlying dynamic traffic flow by a Granger causality test. The experimental results on three backbone models show that using STGC to model the spatial dependence has better results than the original model for 45 min and 1 h long-term prediction.
翻译:交通预测的关键是准确描述公路网络中交通流量的时间动态,因此重要的是要模拟道路网络的空间依赖性。空间依赖性的实质是准确描述交通信息传输如何受到公路网络中其他节点的影响,而以GNN为基础的交通预测模型作为交通预测的基准,已成为通过传递信息传递信息传递信息传递机制进行空间依赖性模型的最常见方法。然而,现有方法模拟当地和静态空间依赖性,无法传输长期预测所需的全球动态交通信息(GDTi),挑战在于难以发现GDTI的准确传输,因为个别运输的不确定性,特别是长期传输的不确定性。在本文件中,我们提出了一个新的假设:GDti在宏观上表现为传递因果关系(TCR)的基本交通流量,在动态变化的交通流量下保持稳定。我们进一步建议用空间时时时速指数模型(STGC)向表达TCR,这是全球和动态空间依赖性模型的模型。在模型上,我们用更好的模型模型模拟了45GDTI的准确性依赖性数据传输,而我们用动态的机因果性机能性动态矩阵测试结果显示我们以动态动态动态动态动态动态的气压流。