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Modeling freight mode choice using machine learning classifiers: a comparative study using Commodity Flow Survey (CFS) data

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  • Majbah Uddin
  • Sabreena Anowar
  • Naveen Eluru

Abstract

This study explores the usefulness of machine learning classifiers for modeling freight mode choice. We investigate eight commonly used machine learning classifiers, namely Naïve Bayes, Support Vector Machine, Artificial Neural Network, K-Nearest Neighbors, Classification and Regression Tree, Random Forest, Boosting and Bagging, along with the classical Multinomial Logit model. US 2012 Commodity Flow Survey data are used as the primary data source; we augment it with spatial attributes from secondary data sources. The performance of the classifiers is compared based on prediction accuracy results. The current research also examines the role of sample size and training-testing data split ratios on the predictive ability of the various approaches. In addition, the importance of variables is estimated to determine how the variables influence freight mode choice. The results show that the tree-based ensemble classifiers perform the best. Specifically, Random Forest produces the most accurate predictions, closely followed by Boosting and Bagging. With regard to variable importance, shipment characteristics, such as shipment distance, industry classification of the shipper and shipment size, are the most significant factors for freight mode choice decisions.

Suggested Citation

  • Majbah Uddin & Sabreena Anowar & Naveen Eluru, 2021. "Modeling freight mode choice using machine learning classifiers: a comparative study using Commodity Flow Survey (CFS) data," Transportation Planning and Technology, Taylor & Francis Journals, vol. 44(5), pages 543-559, July.
  • Handle: RePEc:taf:transp:v:44:y:2021:i:5:p:543-559
    DOI: 10.1080/03081060.2021.1927306
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    Cited by:

    1. Hyeonsup Lim & Majbah Uddin & Yuandong Liu & Shih-Miao Chin & Ho-Ling Hwang, 2022. "A Comparative Study of Machine Learning Algorithms for Industry-Specific Freight Generation Model," Sustainability, MDPI, vol. 14(22), pages 1-25, November.

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