2024
DOI: 10.3389/ffutr.2024.1339273
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Teaching freight mode choice models new tricks using interpretable machine learning methods

Xiaodan Xu,
Hung-Chia Yang,
Kyungsoo Jeong
et al.

Abstract: Understanding and forecasting complex freight mode choice behavior under various industry, policy, and technology contexts is essential for freight planning and policymaking. Numerous models have been developed to provide insights into freight mode selection; most use discrete choice models such as multinomial logit (MNL) models. However, logit models often rely on linear specifications of independent variables despite potential nonlinear relationships in the data. A common challenge for researchers is the abs… Show more

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