Conceitos Básicos
A novel spatial-temporal-decoupled masked pre-training framework (STD-MAE) that effectively captures spatial and temporal heterogeneity to enhance the performance of downstream spatiotemporal predictors.
Resumo
The content discusses a novel self-supervised pre-training framework called Spatial-Temporal-Decoupled Masked Pre-training (STD-MAE) for spatiotemporal forecasting. The key contributions are:
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STD-MAE employs two decoupled masked autoencoders to reconstruct spatiotemporal series along the spatial and temporal dimensions, allowing the model to learn rich-context representations that can be seamlessly integrated into downstream predictors.
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A novel spatial-temporal-decoupled masking strategy is proposed to effectively capture long-range spatial and temporal heterogeneity in the data, which is a key challenge in spatiotemporal forecasting.
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Extensive experiments on six widely used benchmarks demonstrate the state-of-the-art performance of STD-MAE in enhancing the accuracy of various downstream spatiotemporal predictors, including GWNet, DCRNN, MTGNN, STID, and STAEformer.
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Qualitative analyses show that STD-MAE can effectively learn meaningful long-range spatiotemporal patterns and improve the robustness of downstream models against spatiotemporal mirages.
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Ablation studies validate the effectiveness of the spatial-temporal-decoupled design and the generality of STD-MAE for boosting the performance of different types of spatiotemporal predictors.
Estatísticas
Spatiotemporal data exhibits distinct temporal heterogeneity, with weekday and weekend traffic flow patterns showing significant differences, especially during peak hours.
Spatiotemporal data also demonstrates spatial heterogeneity, with sensors in different locations exhibiting distinct traffic flow characteristics.
When the data scale is large, the spatial and temporal heterogeneity becomes highly mixed, posing a key challenge for existing spatiotemporal forecasting models.
Most existing end-to-end models are limited by short input lengths, leading to the issue of spatiotemporal mirage, where similar input time series can lead to dissimilar future values and vice versa.
Citações
"Spatiotemporal forecasting techniques are significant for various domains such as transportation, energy, and weather. Accurate prediction of spatiotemporal series remains challenging due to the complex spatiotemporal heterogeneity."
"Previous researchers have done various attempts for spatiotemporal forecasting: embedding GCN into TCN or RNN, or applying transformer along spatiotemporal axes. But these models often have difficulty in distinguishing the spatial and temporal heterogeneity in a clear way."
"Most of the existing models are trained in an end-to-end manner. Due to their high model complexity, their input horizons are often restricted to a short value (usually 12 steps). This limitation will make the models suffer from an issue denoted as spatiotemporal mirage."