Seeing the Unseen: Learning Basis Confounder Representations for Robust Traffic Prediction
Jiahao Ji, Wentao Zhang, Jingyuan Wang, Chao Huang

TL;DR
The paper introduces STEVE, a novel model that learns basis confounder representations to improve traffic prediction robustness against external confounders like weather and holidays.
Contribution
It proposes a basis vector approach with self-supervised tasks to represent and decouple confounders in traffic prediction, addressing limitations of existing methods.
Findings
Superior performance on four large-scale datasets.
Effective handling of spatial and temporal distribution shifts.
Robustness to unseen confounders.
Abstract
Traffic prediction is essential for intelligent transportation systems and urban computing. It aims to establish a relationship between historical traffic data X and future traffic states Y by employing various statistical or deep learning methods. However, the relations of X -> Y are often influenced by external confounders that simultaneously affect both X and Y , such as weather, accidents, and holidays. Existing deep-learning traffic prediction models adopt the classic front-door and back-door adjustments to address the confounder issue. However, these methods have limitations in addressing continuous or undefined confounders, as they depend on predefined discrete values that are often impractical in complex, real-world scenarios. To overcome this challenge, we propose the Spatial-Temporal sElf-superVised confoundEr learning (STEVE) model. This model introduces a basis vector…
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Taxonomy
TopicsTraffic Prediction and Management Techniques · Human Mobility and Location-Based Analysis · Transportation Planning and Optimization
