Spatial-Temporal Synchronous Graph Convolutional Networks: A New Framework for Spatial-Temporal Network Data Forecasting

3 Apr 2020  ·  Chao Song, Youfang Lin, Shengnan Guo, Huaiyu Wan ·

Spatial-temporal network data forecasting is of great importance in a huge amount of applications for traffic management and urban planning. However, the underlying complex spatial-temporal correlations and heterogeneities make this problem challenging. Existing methods usually use separate components to capture spatial and temporal correlations and ignore the heterogeneities in spatial-temporal data. In this paper, we propose a novel model, named Spatial-Temporal Synchronous Graph Convolutional Networks (STSGCN), for spatial-temporal network data forecasting. The model is able to effectively capture the complex localized spatial-temporal correlations through an elaborately designed spatial-temporal synchronous modeling mechanism. Meanwhile, multiple modules for different time periods are designed in the model to effectively capture the heterogeneities in localized spatialtemporal graphs. Extensive experiments are conducted on four real-world datasets, which demonstrates that our method achieves the state-of-the-art performance and consistently outperforms other baselines.

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Results from the Paper


Task Dataset Model Metric Name Metric Value Global Rank Benchmark
Traffic Prediction BJTaxi STSGCN MAE @ in 12.72 # 3
MAE @ out 12.79 # 3
MAPE (%) @ in 17.22 # 3
MAPE (%) @ out 17.35 # 3
Traffic Prediction NYCBike1 STSGCN MAE @ in 5.81 # 3
MAE @ out 6.10 # 3
MAPE (%) @ in 26.51 # 3
MAPE (%) @ out 27.56 # 3
Traffic Prediction NYCBike2 STSGCN MAE @ in 5.25 # 3
MAE @ out 4.94 # 3
MAPE (%) @ in 29.26 # 3
MAPE (%) @ out 28.02 # 3
Traffic Prediction NYCTaxi STSGCN MAE @ in 13.69 # 3
MAE @ out 10.75 # 3
MAPE (%) @ in 22.91 # 3
MAPE (%) @ out 22.37 # 3
Traffic Prediction PeMS07 STSGCN MAE@1h 24.26 # 12

Methods