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Book-ahead ride-hailing trip and its determinants: Findings from large-scale trip records in China

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Book-ahead ride-hailing trip and its determinants: Findings from large-scale trip records in China. / Li, W.; Zhao, S.; Ma, J. et al.
In: Transportation Research Part A: Policy and Practice, Vol. 178, 103875, 31.12.2023.

Research output: Contribution to Journal/MagazineJournal articlepeer-review

Harvard

Li, W, Zhao, S, Ma, J, Nielsen, OA & Jiang, Y 2023, 'Book-ahead ride-hailing trip and its determinants: Findings from large-scale trip records in China', Transportation Research Part A: Policy and Practice, vol. 178, 103875. https://doi.org/10.1016/j.tra.2023.103875

APA

Li, W., Zhao, S., Ma, J., Nielsen, O. A., & Jiang, Y. (2023). Book-ahead ride-hailing trip and its determinants: Findings from large-scale trip records in China. Transportation Research Part A: Policy and Practice, 178, Article 103875. https://doi.org/10.1016/j.tra.2023.103875

Vancouver

Li W, Zhao S, Ma J, Nielsen OA, Jiang Y. Book-ahead ride-hailing trip and its determinants: Findings from large-scale trip records in China. Transportation Research Part A: Policy and Practice. 2023 Dec 31;178:103875. Epub 2023 Nov 1. doi: 10.1016/j.tra.2023.103875

Author

Li, W. ; Zhao, S. ; Ma, J. et al. / Book-ahead ride-hailing trip and its determinants : Findings from large-scale trip records in China. In: Transportation Research Part A: Policy and Practice. 2023 ; Vol. 178.

Bibtex

@article{b7e8a114f7804711af55b29529ad8461,
title = "Book-ahead ride-hailing trip and its determinants: Findings from large-scale trip records in China",
abstract = "The cruising of ride-hailing vehicles generates negative externalities such as traffic congestion and vehicular emissions. These externalities can be mitigated by reducing cruising driving via operating book-ahead ride-hailing services, where the platform dispatches and routes drivers based on precise information on travelers{\textquoteright} departure time and origin–destination (OD). However, the effects of factors influencing book-ahead ride-hailing trips have rarely been empirically examined with real data. Using six-month trip data from China, this study employs a gradient boosting decision tree (GBDT) method with hyperparameters optimized by the Bayesian optimization algorithm to examine the factors associated with book-ahead ride-hailing trips across OD pairs (hexagon cells-to-hexagon cells) at various spatial scales. The relative importance rankings generated from this study indicate that trip features, weather conditions, and accessibility to transportation hubs are significant determinants correlated with the usages of book-ahead ride-hailing. The partial dependence plots demonstrate the nonlinear threshold effects of these determinants on the hourly number of book-ahead ride-hailing per OD pair. Moreover, this study compares the differences in associations between peak and non-peak hours as well as weekdays and weekends. The disparity in the nonlinear threshold effects between weekdays and weekends is only observable during the evening peak period and not at other times. These findings provide valuable insights into developing practical strategies for promoting book-ahead ride-hailing services.",
keywords = "Reserved transportation, Book-ahead trip, On-demand ride-hailing, Nonlinear effects, Built environment, GBDT",
author = "W. Li and S. Zhao and J. Ma and O.A. Nielsen and Y. Jiang",
year = "2023",
month = dec,
day = "31",
doi = "10.1016/j.tra.2023.103875",
language = "English",
volume = "178",
journal = "Transportation Research Part A: Policy and Practice",
issn = "0965-8564",
publisher = "Elsevier Limited",

}

RIS

TY - JOUR

T1 - Book-ahead ride-hailing trip and its determinants

T2 - Findings from large-scale trip records in China

AU - Li, W.

AU - Zhao, S.

AU - Ma, J.

AU - Nielsen, O.A.

AU - Jiang, Y.

PY - 2023/12/31

Y1 - 2023/12/31

N2 - The cruising of ride-hailing vehicles generates negative externalities such as traffic congestion and vehicular emissions. These externalities can be mitigated by reducing cruising driving via operating book-ahead ride-hailing services, where the platform dispatches and routes drivers based on precise information on travelers’ departure time and origin–destination (OD). However, the effects of factors influencing book-ahead ride-hailing trips have rarely been empirically examined with real data. Using six-month trip data from China, this study employs a gradient boosting decision tree (GBDT) method with hyperparameters optimized by the Bayesian optimization algorithm to examine the factors associated with book-ahead ride-hailing trips across OD pairs (hexagon cells-to-hexagon cells) at various spatial scales. The relative importance rankings generated from this study indicate that trip features, weather conditions, and accessibility to transportation hubs are significant determinants correlated with the usages of book-ahead ride-hailing. The partial dependence plots demonstrate the nonlinear threshold effects of these determinants on the hourly number of book-ahead ride-hailing per OD pair. Moreover, this study compares the differences in associations between peak and non-peak hours as well as weekdays and weekends. The disparity in the nonlinear threshold effects between weekdays and weekends is only observable during the evening peak period and not at other times. These findings provide valuable insights into developing practical strategies for promoting book-ahead ride-hailing services.

AB - The cruising of ride-hailing vehicles generates negative externalities such as traffic congestion and vehicular emissions. These externalities can be mitigated by reducing cruising driving via operating book-ahead ride-hailing services, where the platform dispatches and routes drivers based on precise information on travelers’ departure time and origin–destination (OD). However, the effects of factors influencing book-ahead ride-hailing trips have rarely been empirically examined with real data. Using six-month trip data from China, this study employs a gradient boosting decision tree (GBDT) method with hyperparameters optimized by the Bayesian optimization algorithm to examine the factors associated with book-ahead ride-hailing trips across OD pairs (hexagon cells-to-hexagon cells) at various spatial scales. The relative importance rankings generated from this study indicate that trip features, weather conditions, and accessibility to transportation hubs are significant determinants correlated with the usages of book-ahead ride-hailing. The partial dependence plots demonstrate the nonlinear threshold effects of these determinants on the hourly number of book-ahead ride-hailing per OD pair. Moreover, this study compares the differences in associations between peak and non-peak hours as well as weekdays and weekends. The disparity in the nonlinear threshold effects between weekdays and weekends is only observable during the evening peak period and not at other times. These findings provide valuable insights into developing practical strategies for promoting book-ahead ride-hailing services.

KW - Reserved transportation

KW - Book-ahead trip

KW - On-demand ride-hailing

KW - Nonlinear effects

KW - Built environment

KW - GBDT

U2 - 10.1016/j.tra.2023.103875

DO - 10.1016/j.tra.2023.103875

M3 - Journal article

VL - 178

JO - Transportation Research Part A: Policy and Practice

JF - Transportation Research Part A: Policy and Practice

SN - 0965-8564

M1 - 103875

ER -