PDFormer: Propagation Delay-Aware Dynamic Long-Range Transformer for Traffic Flow Prediction

19 Jan 2023  ·  Jiawei Jiang, Chengkai Han, Wayne Xin Zhao, Jingyuan Wang ·

As a core technology of Intelligent Transportation System, traffic flow prediction has a wide range of applications. The fundamental challenge in traffic flow prediction is to effectively model the complex spatial-temporal dependencies in traffic data. Spatial-temporal Graph Neural Network (GNN) models have emerged as one of the most promising methods to solve this problem. However, GNN-based models have three major limitations for traffic prediction: i) Most methods model spatial dependencies in a static manner, which limits the ability to learn dynamic urban traffic patterns; ii) Most methods only consider short-range spatial information and are unable to capture long-range spatial dependencies; iii) These methods ignore the fact that the propagation of traffic conditions between locations has a time delay in traffic systems. To this end, we propose a novel Propagation Delay-aware dynamic long-range transFormer, namely PDFormer, for accurate traffic flow prediction. Specifically, we design a spatial self-attention module to capture the dynamic spatial dependencies. Then, two graph masking matrices are introduced to highlight spatial dependencies from short- and long-range views. Moreover, a traffic delay-aware feature transformation module is proposed to empower PDFormer with the capability of explicitly modeling the time delay of spatial information propagation. Extensive experimental results on six real-world public traffic datasets show that our method can not only achieve state-of-the-art performance but also exhibit competitive computational efficiency. Moreover, we visualize the learned spatial-temporal attention map to make our model highly interpretable.

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Results from the Paper


Task Dataset Model Metric Name Metric Value Global Rank Uses Extra
Training Data
Result Benchmark
Traffic Prediction PeMS04 PDFormer 12 Steps MAE 18.32 # 4
Traffic Prediction PeMS07 PDFormer MAE@1h 19.83 # 7
Traffic Prediction PeMS08 PDFormer MAE@1h 13.58 # 4
Traffic Prediction PeMSD4 PDFormer 12 steps MAE 18.32 # 2
Traffic Prediction PeMSD7 PDFormer 12 steps MAE 19.832 # 3
Traffic Prediction PeMSD8 PDFormer 12 steps MAE 13.58 # 3

Methods