Fairness-enhancing deep learning for ride-hailing demand prediction
Yunhan Zheng, Qingyi Wang, Dingyi Zhuang, Shenhao Wang, Jinhua Zhao

TL;DR
This paper introduces a socially aware neural network model with bias mitigation techniques to improve fairness and accuracy in ride-hailing demand prediction, addressing disparities in disadvantaged neighborhoods.
Contribution
It proposes a novel deep learning architecture and regularization method to enhance fairness in demand forecasting for ride-hailing services, validated on real-world data.
Findings
The de-biasing SA-Net improves prediction accuracy for all groups.
The model effectively reduces the demand prediction bias gap.
It protects disadvantaged regions from systematic underestimation.
Abstract
Short-term demand forecasting for on-demand ride-hailing services is one of the fundamental issues in intelligent transportation systems. However, previous travel demand forecasting research predominantly focused on improving prediction accuracy, ignoring fairness issues such as systematic underestimations of travel demand in disadvantaged neighborhoods. This study investigates how to measure, evaluate, and enhance prediction fairness between disadvantaged and privileged communities in spatial-temporal demand forecasting of ride-hailing services. A two-pronged approach is taken to reduce the demand prediction bias. First, we develop a novel deep learning model architecture, named socially aware neural network (SA-Net), to integrate the socio-demographics and ridership information for fair demand prediction through an innovative socially-aware convolution operation. Second, we propose a…
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Taxonomy
TopicsTraffic Prediction and Management Techniques · Transportation Planning and Optimization · Transportation and Mobility Innovations
MethodsEmirates Airlines Office in Dubai · Convolution · Attentive Walk-Aggregating Graph Neural Network
