Make More Connections: Urban Traffic Flow Forecasting with Spatiotemporal Adaptive Gated Graph Convolution Network

Bin Lu, Xiaoying Gan, Haiming Jin, Luoyi Fu, Xinbing Wang, Haisong Zhang
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引用次数: 11

Abstract

Urban traffic flow forecasting is a critical issue in intelligent transportation systems. Due to the complexity and uncertainty of urban road conditions, how to capture the dynamic spatiotemporal correlation and make accurate predictions is very challenging. In most of existing works, urban road network is often modeled as a fixed graph based on local proximity. However, such modeling is not sufficient to describe the dynamics of the road network and capture the global contextual information. In this paper, we consider constructing the road network as a dynamic weighted graph through attention mechanism. Furthermore, we propose to seek both spatial neighbors and semantic neighbors to make more connections between road nodes. We propose a novel Spatiotemporal Adaptive Gated Graph Convolution Network (STAG-GCN) to predict traffic conditions for several time steps ahead. STAG-GCN mainly consists of two major components: (1) multivariate self-attention Temporal Convolution Network (TCN) is utilized to capture local and long-range temporal dependencies across recent, daily-periodic and weekly-periodic observations; (2) mix-hop AG-GCN extracts selective spatial and semantic dependencies within multi-layer stacking through adaptive graph gating mechanism and mix-hop propagation mechanism. The output of different components are weighted fused to generate the final prediction results. Extensive experiments on two real-world large scale urban traffic dataset have verified the effectiveness, and the multi-step forecasting performance of our proposed models outperforms the state-of-the-art baselines.
建立更多联系:基于时空自适应门控图卷积网络的城市交通流预测
城市交通流预测是智能交通系统中的一个关键问题。由于城市道路状况的复杂性和不确定性,如何捕捉动态的时空相关性并做出准确的预测是一个非常具有挑战性的问题。在现有的大多数研究中,城市道路网络通常被建模为基于局部邻近的固定图。然而,这种建模不足以描述道路网络的动态和捕获全局上下文信息。本文考虑通过注意机制将路网构造为一个动态加权图。此外,我们建议同时寻找空间邻居和语义邻居,以在道路节点之间建立更多的联系。我们提出了一种新的时空自适应门控图卷积网络(STAG-GCN)来预测未来几个时间步的交通状况。STAG-GCN主要由两个主要部分组成:(1)利用多元自关注时间卷积网络(TCN)捕获近期、日周期和周周期观测值的局部和长期时间依赖性;(2)混合跳AG-GCN通过自适应图门机制和混合跳传播机制提取多层叠加中的选择性空间和语义依赖关系。对不同分量的输出进行加权融合,生成最终的预测结果。在两个现实世界的大规模城市交通数据集上进行的大量实验验证了该模型的有效性,并且我们提出的模型的多步预测性能优于最先进的基线。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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