Interpretable long-term traffic modelling on national road networks using theory-informed deep learning
arXiv cs.LG / 3/30/2026
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Key Points
- The paper proposes DeepDemand, a theory-informed deep learning framework for long-term highway traffic volume prediction that aims to balance interpretability, transferability, and predictive accuracy.
- DeepDemand embeds components of travel demand theory, using a competitive two-source Dijkstra approach to extract local origin-destination (OD) regions and screening OD pairs before applying a differentiable architecture for OD interaction modeling and travel-time deterrence.
- It is evaluated on eight years of UK strategic road network observations (2017–2024) across 5,088 highway segments, achieving strong results with R2 = 0.718 (random cross-validation) and MAE of 7,406 vehicles.
- The model maintains performance under spatial cross-validation (R2 = 0.665), suggesting geographic transferability beyond the training areas.
- Interpretability analysis finds a stable nonlinear travel-time deterrence effect and identifies key socioeconomic drivers and OD interaction structures consistent with major employment centres and transport hubs.
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