As an important part of intelligent transportation systems, traffic forecasting has attracted tremendous attention from academia and industry. Despite a lot of methods being proposed for traffic forecasting, it is still difficult to model complex spatial-temporal dependency. Temporal dependency includes short-term dependency and long-term dependency, and the latter is often overlooked. Spatial dependency can be divided into two parts: distance-based spatial dependency and hidden spatial dependency. To model complex spatial-temporal dependency, we propose a novel framework for traffic forecasting, named Spatial-Temporal Graph Convolutional Gated Recurrent Network (STGCGRN). We design an attention module to capture long-term dependency by mining periodic information in traffic data. We propose a Double Graph Convolution Gated Recurrent Unit (DGCGRU) to capture spatial dependency, which integrates graph convolutional network and GRU. The graph convolution part models distance-based spatial dependency with the distance-based predefined adjacency matrix and hidden spatial dependency with the self-adaptive adjacency matrix, respectively. Specially, we employ the multi-head mechanism to capture multiple hidden dependencies. In addition, the periodic pattern of each prediction node may be different, which is often ignored, resulting in mutual interference of periodic information among nodes when modeling spatial dependency. For this, we explore the architecture of model and improve the performance. Experiments on four datasets demonstrate the superior performance of our model.
翻译:作为智能运输系统的一个重要部分,交通预报吸引了学术界和工业界的极大关注。尽管为交通预测提出了许多方法,但仍然难以模拟复杂的空间时空依赖性。时间依赖性包括短期依赖性和长期依赖性,而后者往往被忽视。空间依赖性可以分为两个部分:远距离空间依赖性和隐性空间依赖性。为模拟复杂的空间时空依赖性,我们提议了一个新的交通预测框架,名为空间时空图动态同步经常网(STGCGRN)。我们设计了一个关注模块,通过挖掘交通数据中的定期信息来捕捉长期依赖性。我们提议建立一个双图表变迁经常单元(DGCGRU)来捕捉空间依赖性,其中将图形变幻网络和GRU结合起来。图变部分将远程空间依赖性与远基预先界定的相邻性矩阵模型模型模型模型(ST)建模,以及隐藏的空间依赖性空间依赖性。我们特别使用多头机制来捕捉多种隐性依赖性交通数据。此外,我们提出的双图变变的经常地分析模型,因此,每个空间实验性业绩的周期性模型不会被忽略。