TEAM: Topological Evolution-aware Framework for Traffic Forecasting--Extended Version
Duc Kieu, Tung Kieu, Peng Han, Bin Yang, Christian S. Jensen, Bac Le

TL;DR
This paper introduces TEAM, a framework for traffic forecasting that adapts to evolving road networks and traffic data over time, reducing re-training costs while maintaining accuracy.
Contribution
The paper proposes a novel continual learning framework that incorporates topological evolution awareness, enabling efficient model updates in dynamic urban traffic environments.
Findings
TEAM achieves lower re-training costs compared to existing methods.
It maintains high forecasting accuracy despite network topology changes.
Empirical results on real-world datasets validate its effectiveness.
Abstract
Due to the global trend towards urbanization, people increasingly move to and live in cities that then continue to grow. Traffic forecasting plays an important role in the intelligent transportation systems of cities as well as in spatio-temporal data mining. State-of-the-art forecasting is achieved by deep-learning approaches due to their ability to contend with complex spatio-temporal dynamics. However, existing methods assume the input is fixed-topology road networks and static traffic time series. These assumptions fail to align with urbanization, where time series are collected continuously and road networks evolve over time. In such settings, deep-learning models require frequent re-initialization and re-training, imposing high computational costs. To enable much more efficient training without jeopardizing model accuracy, we propose the Topological Evolution-aware Framework…
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Taxonomy
TopicsData Visualization and Analytics · Semantic Web and Ontologies · Advanced Database Systems and Queries
MethodsALIGN · Convolution
