FairTP: A Prolonged Fairness Framework for Traffic Prediction
Jiangnan Xia, Yu Yang, Jiaxing Shen, Senzhang Wang, Jiannong Cao

TL;DR
FairTP introduces a novel framework for traffic prediction that maintains fairness over time and across regions by classifying sensor states and employing balanced sampling, addressing biases caused by data imbalance.
Contribution
It proposes two new fairness definitions for dynamic traffic scenarios and a state identification module to ensure prolonged fairness in traffic prediction models.
Findings
Significantly improves fairness in traffic prediction
Reduces prediction bias in underrepresented regions
Maintains high overall accuracy
Abstract
Traffic prediction plays a crucial role in intelligent transportation systems. Existing approaches primarily focus on improving overall accuracy, often neglecting a critical issue: whether predictive models lead to biased decisions by transportation authorities. In practice, the uneven deployment of traffic sensors across urban areas results in imbalanced data, causing prediction models to perform poorly in certain regions and leading to unfair decision-making. This imbalance ultimately harms the equity and quality of life for residents. Moreover, current fairness-aware machine learning models only ensure fairness at specific time points, failing to maintain fairness over extended periods. As traffic conditions change, such static fairness approaches become ineffective. To address this gap, we propose FairTP, a framework for prolonged fair traffic prediction. We introduce two new…
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Code & Models
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Taxonomy
TopicsAdversarial Robustness in Machine Learning
MethodsFocus
