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Prediction of travel mode choice (TMC) is crucial for urban planners and policymakers to promote sustainable transportation systems and reduce traffic congestion. In recent decades, the prediction of TMC to schools, which involves daily commuting, has attracted the interest of researchers in green urban planning and a better society. Statistical models are based on many unrealistic premises about the data distribution and are typically used to perform mode choice analysis, which might result in biased model predictions. Moreover, machine learning algorithms that are assumption-free can handle complex, imbalanced, and multiclass datasets with high interpretability and outperform conventional techniques; thus, they have received much attention. Therefore, the present study intends to use modern techniques, such as Naďve Bayes, random forest, gradient boost, support vector machine, and linear regression, to predict the TMC to school (highest level of education) and its influencing factors. The current study contributes to the existing literature through (1) the application of modern techniques for the prediction of school TMC, (2) feature importance to predict the most significant feature of school TMC, (3) a proposal of the best predictive model, and (4) a discussion of the effectiveness of modern techniques over traditional methods. A total of 2756 samples from the NextGen 2022 National Household Travel Survey – California dataset was utilized to predict school TMC and its influencing factors. Based on the predictions, it was found that gradient boost outperformed other machine learning models with an accuracy of 98.9% in training and 83% in testing. Moreover, random forest achieved an accuracy of 77.8% and 71.1% in training and testing. Based on the sensitivity analysis, it was found that age is the most significant factor in determining the TMC to school, followed by the type of school. The findings will help policymakers and can be used to better understand modeling TMCs to schools, promoting sustainable transportation options.
Czasopismo
Rocznik
Tom
Strony
125--137
Opis fizyczny
Bibliogr. 20 poz.
Twórcy
autor
- Silesian University of Technology, Faculty of Transport and Aviation Engineering; Krasińskiego 8, 40-019 Katowice, Poland
autor
- Centre for Transportation Research, Faculty of Engineering, University Malaya, Wilayah Persekutuan Kuala Lumpur 50603, Malaysia
Bibliografia
- 1. McDonald, N.C. & Brown, A.L. & Marchetti, L.M. et al. U.S. School Travel, 2009: An assessment of trends. American Journal of Preventive Medicine. 2011. Vol. 41(2). P. 146-151.
- 2. Lidbe, A. & Li, X. & Adanu, E.K. et al. Exploratory analysis of recent trends in school travel mode choices in the U.S. Transportation Research Interdisciplinary Perspectives. 2020. Vol. 6. No. 100146.
- 3. Mancini, J.M. Census and sustainability: school provision, urban teenagers, and unequal access to active transport in the Republic of Ireland. Irish Educational Studies. 2025. Vol. 44(2). P. 1-20.
- 4. Buehler, R. Determinants of transport mode choice: a comparison of Germany and the USA. Journal of Transport Geography. 2011. Vol. 19(4). P. 644-657.
- 5. Xu, Z. & Aghaabbasi, M. & Ali, M. et al. Targeting sustainable transportation development: the support vector machine and the bayesian optimization algorithm for classifying household vehicle ownership. Sustainability. 2022. Vol. 14(17). No. 11094.
- 6. Saitluanga, B.L. & Hmangaihzela, L. Transport mode choice among off-campus students in a hilly environment: the case of Aizawl, India. Transport Problems. 2022. Vol. 17(3). P. 164-172.
- 7. Liu, Y. & Min, S. & Shi, Z. et al. Exploring students’ choice of active travel to school in different spatial environments: A case study in a mountain city. Journal of Transport Geography. 2024. Vol. 115. No. 103795.
- 8. McDonald, N.C. & Deakin, E. & Aalborg, A.E. Influence of the social environment on children’s school travel. Preventive Medicine. 2010. Vol. 50. P. S65-S68.
- 9. Uddin, M. & Pan, M.M. & Hwang, H.L. Factors influencing mode choice of adults with travellimiting disability. Journal of Transport and Health. 2023. Vol. 33. No. 101714.
- 10. Hu, H. & Xu, J. & Shen, Q. et al. Travel mode choices in small cities of China: A case study of Changting. Transportation Research Part D: Transport and Environment. 2018. Vol. 59. P. 361- 374.
- 11. Rothman, L. & Macpherson, A.K. & Ross, T. et al. The decline in active school transportation (AST): A systematic review of the factors related to AST and changes in school transport over time in North America. Preventive Medicine. 2018. Vol. 111. P. 314-322.
- 12. Zhang, R. & Yao, E. & Liu, Z. School travel mode choice in Beijing, China. Journal of Transport Geography. 2017. Vol. 62. P. 98-110.
- 13. Ali, M. Discrete Choice models and artificial intelligence techniques for predicting the determinants of transport mode choice – a systematic review. CMC-Computers, Materials & Continua. 2024. Vol. 81(2). P. 2161-2194.
- 14. Qian, Y. & Aghaabbasi, M. & Ali, M. et al. Classification of imbalanced travel mode choice to work data using adjustable SVM model. Applied Sciences. 2021. Vol. 11(24). No. 11916.
- 15. Tamim Kashifi, M. & Jamal, A. & Samim Kashefi, M. et al. Predicting the travel mode choice with interpretable machine learning techniques: A comparative study. Travel Behaviour and Society. 2022. Vol. 29. P. 279-296.
- 16. Ali, M. & Macioszek, E. & Onyelowe, K. et al. Interaction of activity travel, GHG emissions, and health parameters using R – A Step towards sustainable transportation system. Ain Shams Engineering Journal. 2024. Vol. 15(12). No. 103050.
- 17. Ali, M. & Macioszek, E. & Yuen, C.W. Health enhancement through activity travel participation and physical activity intensity. Journal of Transport & Health. 2024. Vol. 39. No. 101927.
- 18. Park, K. & Esfahani, H.N. & Novack, V.L. et al. Impacts of disability on daily travel behaviour: A systematic review. Transport Reviews. 2023. Vol. 43(2). P. 178-203.
- 19. Buijs, R. & Koch, T. & Dugundji, E. Using neural nets to predict transportation mode choice: an Amsterdam case study. Procedia Computer Science. 2020. Vol. 170. P. 115-122.
- 20. Le, J. & Teng, J. Understanding influencing factors of travel mode choice in urban-suburban travel: a case study in Shanghai. Urban Rail Transit. 2023. Vol. 9(2). P. 127-146.
Typ dokumentu
Bibliografia
Identyfikator YADDA
bwmeta1.element.baztech-61ac03d0-7b14-4b26-b822-a56360f4fdcf
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