Embedding spatial context in urban traffic forecasting with contrastive pre-training
Low, Matthew, Prabowo, Arian, Xue, Hao, Salim, Flora
–arXiv.org Artificial Intelligence
Urban traffic forecasting is a commonly encountered problem, with wide-ranging applications in fields such as urban planning, civil engineering and transport. In this paper, we study the enhancement of traffic forecasting with pre-training, focusing on spatio-temporal graph methods. While various machine learning methods to solve traffic forecasting problems have been explored and extensively studied, there is a gap of a more contextual approach: studying how relevant non-traffic data can improve prediction performance on traffic forecasting problems. We call this data spatial context. We introduce a novel method of combining road and traffic information through the notion of a traffic quotient graph, a quotient graph formed from road geometry and traffic sensors. We also define a way to encode this relationship in the form of a geometric encoder, pre-trained using contrastive learning methods and enhanced with OpenStreetMap data. We introduce and discuss ways to integrate this geometric encoder with existing graph neural network (GNN)-based traffic forecasting models, using a contrastive pre-training paradigm. We demonstrate the potential for this hybrid model to improve generalisation and performance with zero additional traffic data. Code for this paper is available at https://github.com/mattchrlw/forecasting-on-new-roads.
arXiv.org Artificial Intelligence
Mar-19-2025
- Country:
- Oceania > Australia (0.14)
- Pacific Ocean > North Pacific Ocean
- San Francisco Bay (0.04)
- North America > United States
- California
- San Francisco County > San Francisco (0.04)
- Los Angeles County > Los Angeles (0.04)
- California
- Genre:
- Research Report (1.00)
- Industry:
- Transportation (0.68)
- Technology: