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Papers/STAEformer: Spatio-Temporal Adaptive Embedding Makes Vanil...

STAEformer: Spatio-Temporal Adaptive Embedding Makes Vanilla Transformer SOTA for Traffic Forecasting

Hangchen Liu, Zheng Dong, Renhe Jiang, Jiewen Deng, Jinliang Deng, Quanjun Chen, Xuan Song

2023-08-21Traffic PredictionTime Series
PaperPDFCode(official)

Abstract

With the rapid development of the Intelligent Transportation System (ITS), accurate traffic forecasting has emerged as a critical challenge. The key bottleneck lies in capturing the intricate spatio-temporal traffic patterns. In recent years, numerous neural networks with complicated architectures have been proposed to address this issue. However, the advancements in network architectures have encountered diminishing performance gains. In this study, we present a novel component called spatio-temporal adaptive embedding that can yield outstanding results with vanilla transformers. Our proposed Spatio-Temporal Adaptive Embedding transformer (STAEformer) achieves state-of-the-art performance on five real-world traffic forecasting datasets. Further experiments demonstrate that spatio-temporal adaptive embedding plays a crucial role in traffic forecasting by effectively capturing intrinsic spatio-temporal relations and chronological information in traffic time series.

Results

TaskDatasetMetricValueModel
Traffic PredictionPeMS07MAE@1h19.14STAEformer
Traffic PredictionPeMSD712 steps MAE19.14STAEformer
Traffic PredictionPeMSD712 steps MAPE8.01STAEformer
Traffic PredictionPeMSD712 steps RMSE32.6STAEformer
Traffic PredictionPEMS-BAYMAE @ 12 step1.91STAEformer
Traffic PredictionPeMS08MAE@1h13.46STAEformer
Traffic PredictionMETR-LAMAE @ 12 step3.34STAEformer
Traffic PredictionMETR-LAMAE @ 3 step2.65STAEformer
Traffic PredictionPeMS0412 Steps MAE18.22STAEformer

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