Prof. Smart Researches Youth Driver Licensing Determinants

April 16, 2025

Explaining Youth Driver Licensing Determinants Using XGBoost and SHAP

by Kailai Wang, Jonas De Vos, Michael Smart, Sicheng Wang

Highlights

  • Examined trend in youth driver licensing between Millennials and GenZ in the US.
  • Used explainable AI approaches to understand nuanced effects of youth licensing factors.
  • Family played an important role in youth driver’s license acquisition.
  • The highest-income households did not have the highest youth license rate.

Abstract

This study explores the factors influencing driver’s license acquisition among young individuals and examines its broader implications for mobility, safety, and sustainability. Leveraging nationally representative survey data on Millennials and Generation Z, we apply eXtreme Gradient Boosting (XGBoost) and SHapley Additive Explanations (SHAP) to identify key socioeconomic determinants of teenage driver’s license attainment. Our findings reveal consistent predictors across both generations, including the percentage of licensed family members, household income per capita, educational attainment, and public transit ridership. We identify meaningful dose-response relationships, such as the increasing influence of licensed household members beyond a 0.75 threshold and the higher likelihood of licensing among individuals with some college or an associate degree. Additionally, household income exhibits a positive association with licensing within a specific range but declines at higher income levels. Beyond predictive accuracy, this study offers valuable insights into overcoming empirical challenges in transportation research through nonparametric machine learning models. Our findings provide a nuanced understanding of youth mobility behaviors, informing planning and policy strategies to support equitable access to driver education, multimodal transportation options, and sustainable mobility solutions.

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Citation

Kailai Wang, Jonas De Vos, Michael Smart, Sicheng Wang. Explaining Youth Driver Licensing Determinants Using XGBoost and SHAP, Transport Policy, Volume 168, 2025, Pages 87-100, ISSN 0967-070X, https://doi.org/10.1016/j.tranpol.2025.04.009

 

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