2022
DOI: 10.36227/techrxiv.19732483
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Attention to Traffic Forecasting: Improving Predictions with Temporal Graph Attention Networks

Abstract: <p>Dynamic traffic flow forecasting remains an open issue to this day. As other spatio-temporal problems, traffic prediction deals with both temporal and spatial nonlinear relationships, with the particularity that nearby points in the Euclidean space might be allocated in different roads, adding another layer of complexity. Traffic prediction has witnessed a revolution with the appearance of deep learning, with graph neural networks being prominently responsible for a steep increase in forecasting accur… Show more

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