Accurate traffic forecasting is vital to an intelligent transportation system. Although many deep learning models have achieved state-of-art performance for short-term traffic forecasting of up to 1 hour, long-term traffic forecasting that spans multiple hours remains a major challenge. Moreover, most of the existing deep learning traffic forecasting models are black box, presenting additional challenges related to explainability and interpretability. We develop Graph Pyramid Autoformer (X-GPA), an explainable attention-based spatial-temporal graph neural network that uses a novel pyramid autocorrelation attention mechanism. It enables learning from long temporal sequences on graphs and improves long-term traffic forecasting accuracy. Our model can achieve up to 35 % better long-term traffic forecast accuracy than that of several state-of-the-art methods. The attention-based scores from the X-GPA model provide spatial and temporal explanations based on the traffic dynamics, which change for normal vs. peak-hour traffic and weekday vs. weekend traffic.
Abstract:
Publication date:
September 27, 2022
Publication type:
Preprint
Citation:
Zhong, W., Mallick, T., Meidani, H., Macfarlane, J., & Balaprakash, P. (2022). Explainable Graph Pyramid Autoformer for Long-Term Traffic Forecasting (No. arXiv:2209.13123). arXiv. https://doi.org/10.48550/arXiv.2209.13123