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Evolutionary optimization for neural network-based discrete choice modeling: enhancing stability and efficiency

  • 11-11-2025

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Abstract

This article explores the application of evolutionary optimization techniques to enhance the stability and efficiency of neural network-based discrete choice modeling. The study introduces ResLogit Plus, a novel hybrid framework that combines the strengths of traditional discrete choice models with the predictive power of neural networks. The key topics covered include the limitations of traditional models, the integration of genetic algorithms for hyperparameter optimization, and the evaluation of the proposed model across three datasets: Swiss Metro, Carpooling, and Greenhouse Gas Emissions. The results demonstrate that ResLogit Plus outperforms both the original ResLogit model and the Multinomial Logit (MNL) model in terms of predictive accuracy and computational efficiency. The article also discusses the importance of interpretability in discrete choice modeling and how the proposed model addresses this challenge. Additionally, the study highlights the flexibility of the ResLogit Plus model in capturing complex, non-linear relationships in choice data, making it a valuable tool for various domains such as transportation, marketing, and healthcare. The conclusion emphasizes the potential of the proposed model to provide more generalized and interpretable results, contributing to a better understanding of individual preferences and choice behavior.

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Title
Evolutionary optimization for neural network-based discrete choice modeling: enhancing stability and efficiency
Authors
Hamid Hasanzadeh
Bobin Wang
Mikael Rönnqvist
Rayane Badji
Aditya Verma
Publication date
11-11-2025
Publisher
Springer US
Published in
Transportation
Print ISSN: 0049-4488
Electronic ISSN: 1572-9435
DOI
https://doi.org/10.1007/s11116-025-10682-x
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