Papers
Topics
Authors
Recent
2000 character limit reached

The Mixed Aggregate Preference Logit Model: A Machine Learning Approach to Modeling Unobserved Heterogeneity in Discrete Choice Analysis (2402.00184v2)

Published 31 Jan 2024 in econ.EM

Abstract: This paper introduces the Mixed Aggregate Preference Logit (MAPL, pronounced "maple'') model, a novel class of discrete choice models that leverages machine learning to model unobserved heterogeneity in discrete choice analysis. The traditional mixed logit model (also known as "random parameters logit'') parameterizes preference heterogeneity through assumptions about feature-specific heterogeneity distributions. These parameters are also typically assumed to be linearly added in a random utility (or random regret) model. MAPL models relax these assumptions by instead directly relating model inputs to parameters of alternative-specific distributions of aggregate preference heterogeneity, with no feature-level assumptions required. MAPL models eliminate the need to make any assumption about the functional form of the latent decision model, freeing modelers from potential misspecification errors. In a simulation experiment, we demonstrate that a single MAPL model specification is capable of correctly modeling multiple different data-generating processes with different forms of utility and heterogeneity specifications. MAPL models advance machine-learning-based choice models by accounting for unobserved heterogeneity. Further, MAPL models can be leveraged by traditional choice modelers as a diagnostic tool for identifying utility and heterogeneity misspecification.

Definition Search Book Streamline Icon: https://streamlinehq.com
References (28)
  1. Arkoudi, Ioanna, Rico Krueger, Carlos Lima Azevedo, and Francisco C. Pereira, “Combining discrete choice models and neural networks through embeddings: Formulation, interpretability and performance,” Transportation Research Part B: Methodological, 2023, 175 (October 2021), 102783.
  2. Arteaga, Cristian, Jee Woong Park, Prithvi Bhat Beeramoole, and Alexander Paz, “xlogit: An open-source Python package for GPU-accelerated estimation of Mixed Logit models,” Journal of Choice Modelling, 2022, 42 (September 2021), 100339.
  3. Bansal, Prateek, Ricardo A. Daziano, and Martin Achtnicht, “Comparison of parametric and semiparametric representations of unobserved preference heterogeneity in logit models,” Journal of Choice Modelling, 2018, 27 (September 2017), 97–113.
  4. Chorus, Caspar, “Random Regret Minimization: An Overview of Model Properties and Empirical Evidence,” Transport Reviews, 2012, 32 (1), 75–92.
  5. Czajkowski, Mikołaj and Wiktor Budziński, “Simulation error in maximum likelihood estimation of discrete choice models,” Journal of Choice Modelling, 2019, 31 (April), 73–85.
  6. Forsythe, Connor R., Kenneth T. Gillingham, Jeremy J. Michalek, and Kate S. Whitefoot, “Technology advancement is driving electric vehicle adoption,” Proceedings of the National Academy of Sciences of the United States of America, 2023, 120 (23), 1–7.
  7. Fosgerau, Mogens and Stefan L. Mabit, “Easy and flexible mixture distributions,” Economics Letters, 2013, 120 (2), 206–210.
  8. García-García, José Carlos, Ricardo García-Ródenas, Julio Alberto López-Gómez, and José Ángel Martín-Baos, “A comparative study of machine learning, deep neural networks and random utility maximization models for travel mode choice modelling,” Transportation Research Procedia, 2022, 62 (Ewgt 2021), 374–382.
  9. Guo, Yujie and Yu Zhang, “Understanding factors influencing shared e-scooter usage and its impact on auto mode substitution,” Transportation Research Part D: Transport and Environment, 2021, 99 (August), 102991.
  10. Haghani, Milad, Michiel C.J. Bliemer, and David A. Hensher, “The landscape of econometric discrete choice modelling research,” Journal of Choice Modelling, 2021, 40 (June), 100303.
  11. Han, Yafei, Francisco Camara Pereira, Moshe Ben-Akiva, and Christopher Zegras, “A neural-embedded discrete choice model: Learning taste representation with strengthened interpretability,” Transportation Research Part B: Methodological, 2022, 163 (July), 166–186.
  12. Helveston, John Paul, “logitr: Fast Estimation of Multinomial and Mixed Logit Models with Preference Space and Willingness to Pay Space Utility Parameterizations,” Journal of Statistical Software, 2023, 105 (10), 1–37.
  13.   , Yimin Liu, Elea Mc Donnell Feit, Erica Fuchs, Erica Klampfl, and Jeremy J. Michalek, “Will subsidies drive electric vehicle adoption? Measuring consumer preferences in the U.S. and China,” Transportation Research Part A: Policy and Practice, 2015, 73, 96–112.
  14. Kavalec, Chris, “Vehicle choice in an aging population: Some insights from a stated preference survey for California,” Energy Journal, 1999, 20 (3), 123–138.
  15. Krueger, Rico, Taha H. Rashidi, and Akshay Vij, “A Dirichlet process mixture model of discrete choice: Comparisons and a case study on preferences for shared automated vehicles,” Journal of Choice Modelling, 2020, 36 (May), 100229.
  16. Lahoz, Lorena Torres, Francisco Camara Pereira, Georges Sfeir, Ioanna Arkoudi, Mayara Moraes Monteiro, and Carlos Lima Azevedo, “Attitudes and Latent Class Choice Models using Machine Learning,” Journal of Choice Modelling, 2023, 49 (February), 100452.
  17. Linardatos, Pantelis, Vasilis Papastefanopoulos, and Sotiris Kotsiantis, “Explainable ai: A review of machine learning interpretability methods,” Entropy, 2021, 23 (1), 1–45.
  18. McFadden, Daniel and Kenneth Train, “Mixed MNL models for discrete response,” Journal of Applied Econometrics, 2000, 15 (5), 447–470.
  19. McFadden, Daniel L., “Prize Lecture: Economic Choices,” https://www.nobelprize.org/prizes/economic-sciences/2000/mcfadden/lecture/ 2000. Accessed: 2024-01-21.
  20. Molloy, Joseph, Felix Becker, Basil Schmid, and Kay W. Axhausen, “mixl: An open-source R package for estimating complex choice models on large datasets,” Journal of Choice Modelling, 2021, 39 (April 2020), 100284. Oxford English Dictionary: “Valence (n.2), sense 4”
  21. Revelt, David and Kenneth Train, “Mixed logit with repeated choices: Households’ choices of appliance efficiency level,” Review of Economics and Statistics, 1998, 80 (4), 647–657. Salas et al. (2022) Salas, Patricio, Rodrigo De la Fuente, Sebastian Astroza, and Juan Antonio Carrasco, “A systematic comparative evaluation of machine learning classifiers and discrete choice models for travel mode choice in the presence of response heterogeneity,” Expert Systems with Applications, 2022, 193 (November 2021), 116253. Sifringer et al. (2020) Sifringer, Brian, Virginie Lurkin, and Alexandre Alahi, “Enhancing discrete choice models with representation learning,” Transportation Research Part B: Methodological, 2020, 140, 236–261. Train (2009) Train, Kenneth, Discrete Choice Methods with Simulation, 2 ed., Cambridge University Press, 2009. Train (2016)   , “Mixed logit with a flexible mixing distribution,” Journal of Choice Modelling, 2016, 19, 40–53. van Cranenburgh et al. (2022) van Cranenburgh, Sander, Shenhao Wang, Akshay Vij, Francisco Pereira, and Joan Walker, “Choice modelling in the age of machine learning - Discussion paper,” Journal of Choice Modelling, 2022, 42 (December 2021), 100340. Wang et al. (2021) Wang, Shenhao, Baichuan Mo, Stephane Hess, and Jinhua Zhao, “Comparing hundreds of machine learning classifiers and discrete choice models in predicting travel behavior: an empirical benchmark,” 2021. Wong and Farooq (2021) Wong, Melvin and Bilal Farooq, “ResLogit: A residual neural network logit model for data-driven choice modelling,” Transportation Research Part C: Emerging Technologies, 2021, 126 (January), 103050. Salas, Patricio, Rodrigo De la Fuente, Sebastian Astroza, and Juan Antonio Carrasco, “A systematic comparative evaluation of machine learning classifiers and discrete choice models for travel mode choice in the presence of response heterogeneity,” Expert Systems with Applications, 2022, 193 (November 2021), 116253. Sifringer et al. (2020) Sifringer, Brian, Virginie Lurkin, and Alexandre Alahi, “Enhancing discrete choice models with representation learning,” Transportation Research Part B: Methodological, 2020, 140, 236–261. Train (2009) Train, Kenneth, Discrete Choice Methods with Simulation, 2 ed., Cambridge University Press, 2009. Train (2016)   , “Mixed logit with a flexible mixing distribution,” Journal of Choice Modelling, 2016, 19, 40–53. van Cranenburgh et al. (2022) van Cranenburgh, Sander, Shenhao Wang, Akshay Vij, Francisco Pereira, and Joan Walker, “Choice modelling in the age of machine learning - Discussion paper,” Journal of Choice Modelling, 2022, 42 (December 2021), 100340. Wang et al. (2021) Wang, Shenhao, Baichuan Mo, Stephane Hess, and Jinhua Zhao, “Comparing hundreds of machine learning classifiers and discrete choice models in predicting travel behavior: an empirical benchmark,” 2021. Wong and Farooq (2021) Wong, Melvin and Bilal Farooq, “ResLogit: A residual neural network logit model for data-driven choice modelling,” Transportation Research Part C: Emerging Technologies, 2021, 126 (January), 103050. Sifringer, Brian, Virginie Lurkin, and Alexandre Alahi, “Enhancing discrete choice models with representation learning,” Transportation Research Part B: Methodological, 2020, 140, 236–261. Train (2009) Train, Kenneth, Discrete Choice Methods with Simulation, 2 ed., Cambridge University Press, 2009. Train (2016)   , “Mixed logit with a flexible mixing distribution,” Journal of Choice Modelling, 2016, 19, 40–53. van Cranenburgh et al. (2022) van Cranenburgh, Sander, Shenhao Wang, Akshay Vij, Francisco Pereira, and Joan Walker, “Choice modelling in the age of machine learning - Discussion paper,” Journal of Choice Modelling, 2022, 42 (December 2021), 100340. Wang et al. (2021) Wang, Shenhao, Baichuan Mo, Stephane Hess, and Jinhua Zhao, “Comparing hundreds of machine learning classifiers and discrete choice models in predicting travel behavior: an empirical benchmark,” 2021. Wong and Farooq (2021) Wong, Melvin and Bilal Farooq, “ResLogit: A residual neural network logit model for data-driven choice modelling,” Transportation Research Part C: Emerging Technologies, 2021, 126 (January), 103050. Train, Kenneth, Discrete Choice Methods with Simulation, 2 ed., Cambridge University Press, 2009. Train (2016)   , “Mixed logit with a flexible mixing distribution,” Journal of Choice Modelling, 2016, 19, 40–53. van Cranenburgh et al. (2022) van Cranenburgh, Sander, Shenhao Wang, Akshay Vij, Francisco Pereira, and Joan Walker, “Choice modelling in the age of machine learning - Discussion paper,” Journal of Choice Modelling, 2022, 42 (December 2021), 100340. Wang et al. (2021) Wang, Shenhao, Baichuan Mo, Stephane Hess, and Jinhua Zhao, “Comparing hundreds of machine learning classifiers and discrete choice models in predicting travel behavior: an empirical benchmark,” 2021. Wong and Farooq (2021) Wong, Melvin and Bilal Farooq, “ResLogit: A residual neural network logit model for data-driven choice modelling,” Transportation Research Part C: Emerging Technologies, 2021, 126 (January), 103050.   , “Mixed logit with a flexible mixing distribution,” Journal of Choice Modelling, 2016, 19, 40–53. van Cranenburgh et al. (2022) van Cranenburgh, Sander, Shenhao Wang, Akshay Vij, Francisco Pereira, and Joan Walker, “Choice modelling in the age of machine learning - Discussion paper,” Journal of Choice Modelling, 2022, 42 (December 2021), 100340. Wang et al. (2021) Wang, Shenhao, Baichuan Mo, Stephane Hess, and Jinhua Zhao, “Comparing hundreds of machine learning classifiers and discrete choice models in predicting travel behavior: an empirical benchmark,” 2021. Wong and Farooq (2021) Wong, Melvin and Bilal Farooq, “ResLogit: A residual neural network logit model for data-driven choice modelling,” Transportation Research Part C: Emerging Technologies, 2021, 126 (January), 103050. van Cranenburgh, Sander, Shenhao Wang, Akshay Vij, Francisco Pereira, and Joan Walker, “Choice modelling in the age of machine learning - Discussion paper,” Journal of Choice Modelling, 2022, 42 (December 2021), 100340. Wang et al. (2021) Wang, Shenhao, Baichuan Mo, Stephane Hess, and Jinhua Zhao, “Comparing hundreds of machine learning classifiers and discrete choice models in predicting travel behavior: an empirical benchmark,” 2021. Wong and Farooq (2021) Wong, Melvin and Bilal Farooq, “ResLogit: A residual neural network logit model for data-driven choice modelling,” Transportation Research Part C: Emerging Technologies, 2021, 126 (January), 103050. Wang, Shenhao, Baichuan Mo, Stephane Hess, and Jinhua Zhao, “Comparing hundreds of machine learning classifiers and discrete choice models in predicting travel behavior: an empirical benchmark,” 2021. Wong and Farooq (2021) Wong, Melvin and Bilal Farooq, “ResLogit: A residual neural network logit model for data-driven choice modelling,” Transportation Research Part C: Emerging Technologies, 2021, 126 (January), 103050. Wong, Melvin and Bilal Farooq, “ResLogit: A residual neural network logit model for data-driven choice modelling,” Transportation Research Part C: Emerging Technologies, 2021, 126 (January), 103050.
  22. Salas, Patricio, Rodrigo De la Fuente, Sebastian Astroza, and Juan Antonio Carrasco, “A systematic comparative evaluation of machine learning classifiers and discrete choice models for travel mode choice in the presence of response heterogeneity,” Expert Systems with Applications, 2022, 193 (November 2021), 116253. Sifringer et al. (2020) Sifringer, Brian, Virginie Lurkin, and Alexandre Alahi, “Enhancing discrete choice models with representation learning,” Transportation Research Part B: Methodological, 2020, 140, 236–261. Train (2009) Train, Kenneth, Discrete Choice Methods with Simulation, 2 ed., Cambridge University Press, 2009. Train (2016)   , “Mixed logit with a flexible mixing distribution,” Journal of Choice Modelling, 2016, 19, 40–53. van Cranenburgh et al. (2022) van Cranenburgh, Sander, Shenhao Wang, Akshay Vij, Francisco Pereira, and Joan Walker, “Choice modelling in the age of machine learning - Discussion paper,” Journal of Choice Modelling, 2022, 42 (December 2021), 100340. Wang et al. (2021) Wang, Shenhao, Baichuan Mo, Stephane Hess, and Jinhua Zhao, “Comparing hundreds of machine learning classifiers and discrete choice models in predicting travel behavior: an empirical benchmark,” 2021. Wong and Farooq (2021) Wong, Melvin and Bilal Farooq, “ResLogit: A residual neural network logit model for data-driven choice modelling,” Transportation Research Part C: Emerging Technologies, 2021, 126 (January), 103050. Sifringer, Brian, Virginie Lurkin, and Alexandre Alahi, “Enhancing discrete choice models with representation learning,” Transportation Research Part B: Methodological, 2020, 140, 236–261. Train (2009) Train, Kenneth, Discrete Choice Methods with Simulation, 2 ed., Cambridge University Press, 2009. Train (2016)   , “Mixed logit with a flexible mixing distribution,” Journal of Choice Modelling, 2016, 19, 40–53. van Cranenburgh et al. (2022) van Cranenburgh, Sander, Shenhao Wang, Akshay Vij, Francisco Pereira, and Joan Walker, “Choice modelling in the age of machine learning - Discussion paper,” Journal of Choice Modelling, 2022, 42 (December 2021), 100340. Wang et al. (2021) Wang, Shenhao, Baichuan Mo, Stephane Hess, and Jinhua Zhao, “Comparing hundreds of machine learning classifiers and discrete choice models in predicting travel behavior: an empirical benchmark,” 2021. Wong and Farooq (2021) Wong, Melvin and Bilal Farooq, “ResLogit: A residual neural network logit model for data-driven choice modelling,” Transportation Research Part C: Emerging Technologies, 2021, 126 (January), 103050. Train, Kenneth, Discrete Choice Methods with Simulation, 2 ed., Cambridge University Press, 2009. Train (2016)   , “Mixed logit with a flexible mixing distribution,” Journal of Choice Modelling, 2016, 19, 40–53. van Cranenburgh et al. (2022) van Cranenburgh, Sander, Shenhao Wang, Akshay Vij, Francisco Pereira, and Joan Walker, “Choice modelling in the age of machine learning - Discussion paper,” Journal of Choice Modelling, 2022, 42 (December 2021), 100340. Wang et al. (2021) Wang, Shenhao, Baichuan Mo, Stephane Hess, and Jinhua Zhao, “Comparing hundreds of machine learning classifiers and discrete choice models in predicting travel behavior: an empirical benchmark,” 2021. Wong and Farooq (2021) Wong, Melvin and Bilal Farooq, “ResLogit: A residual neural network logit model for data-driven choice modelling,” Transportation Research Part C: Emerging Technologies, 2021, 126 (January), 103050.   , “Mixed logit with a flexible mixing distribution,” Journal of Choice Modelling, 2016, 19, 40–53. van Cranenburgh et al. (2022) van Cranenburgh, Sander, Shenhao Wang, Akshay Vij, Francisco Pereira, and Joan Walker, “Choice modelling in the age of machine learning - Discussion paper,” Journal of Choice Modelling, 2022, 42 (December 2021), 100340. Wang et al. (2021) Wang, Shenhao, Baichuan Mo, Stephane Hess, and Jinhua Zhao, “Comparing hundreds of machine learning classifiers and discrete choice models in predicting travel behavior: an empirical benchmark,” 2021. Wong and Farooq (2021) Wong, Melvin and Bilal Farooq, “ResLogit: A residual neural network logit model for data-driven choice modelling,” Transportation Research Part C: Emerging Technologies, 2021, 126 (January), 103050. van Cranenburgh, Sander, Shenhao Wang, Akshay Vij, Francisco Pereira, and Joan Walker, “Choice modelling in the age of machine learning - Discussion paper,” Journal of Choice Modelling, 2022, 42 (December 2021), 100340. Wang et al. (2021) Wang, Shenhao, Baichuan Mo, Stephane Hess, and Jinhua Zhao, “Comparing hundreds of machine learning classifiers and discrete choice models in predicting travel behavior: an empirical benchmark,” 2021. Wong and Farooq (2021) Wong, Melvin and Bilal Farooq, “ResLogit: A residual neural network logit model for data-driven choice modelling,” Transportation Research Part C: Emerging Technologies, 2021, 126 (January), 103050. Wang, Shenhao, Baichuan Mo, Stephane Hess, and Jinhua Zhao, “Comparing hundreds of machine learning classifiers and discrete choice models in predicting travel behavior: an empirical benchmark,” 2021. Wong and Farooq (2021) Wong, Melvin and Bilal Farooq, “ResLogit: A residual neural network logit model for data-driven choice modelling,” Transportation Research Part C: Emerging Technologies, 2021, 126 (January), 103050. Wong, Melvin and Bilal Farooq, “ResLogit: A residual neural network logit model for data-driven choice modelling,” Transportation Research Part C: Emerging Technologies, 2021, 126 (January), 103050.
  23. Sifringer, Brian, Virginie Lurkin, and Alexandre Alahi, “Enhancing discrete choice models with representation learning,” Transportation Research Part B: Methodological, 2020, 140, 236–261. Train (2009) Train, Kenneth, Discrete Choice Methods with Simulation, 2 ed., Cambridge University Press, 2009. Train (2016)   , “Mixed logit with a flexible mixing distribution,” Journal of Choice Modelling, 2016, 19, 40–53. van Cranenburgh et al. (2022) van Cranenburgh, Sander, Shenhao Wang, Akshay Vij, Francisco Pereira, and Joan Walker, “Choice modelling in the age of machine learning - Discussion paper,” Journal of Choice Modelling, 2022, 42 (December 2021), 100340. Wang et al. (2021) Wang, Shenhao, Baichuan Mo, Stephane Hess, and Jinhua Zhao, “Comparing hundreds of machine learning classifiers and discrete choice models in predicting travel behavior: an empirical benchmark,” 2021. Wong and Farooq (2021) Wong, Melvin and Bilal Farooq, “ResLogit: A residual neural network logit model for data-driven choice modelling,” Transportation Research Part C: Emerging Technologies, 2021, 126 (January), 103050. Train, Kenneth, Discrete Choice Methods with Simulation, 2 ed., Cambridge University Press, 2009. Train (2016)   , “Mixed logit with a flexible mixing distribution,” Journal of Choice Modelling, 2016, 19, 40–53. van Cranenburgh et al. (2022) van Cranenburgh, Sander, Shenhao Wang, Akshay Vij, Francisco Pereira, and Joan Walker, “Choice modelling in the age of machine learning - Discussion paper,” Journal of Choice Modelling, 2022, 42 (December 2021), 100340. Wang et al. (2021) Wang, Shenhao, Baichuan Mo, Stephane Hess, and Jinhua Zhao, “Comparing hundreds of machine learning classifiers and discrete choice models in predicting travel behavior: an empirical benchmark,” 2021. Wong and Farooq (2021) Wong, Melvin and Bilal Farooq, “ResLogit: A residual neural network logit model for data-driven choice modelling,” Transportation Research Part C: Emerging Technologies, 2021, 126 (January), 103050.   , “Mixed logit with a flexible mixing distribution,” Journal of Choice Modelling, 2016, 19, 40–53. van Cranenburgh et al. (2022) van Cranenburgh, Sander, Shenhao Wang, Akshay Vij, Francisco Pereira, and Joan Walker, “Choice modelling in the age of machine learning - Discussion paper,” Journal of Choice Modelling, 2022, 42 (December 2021), 100340. Wang et al. (2021) Wang, Shenhao, Baichuan Mo, Stephane Hess, and Jinhua Zhao, “Comparing hundreds of machine learning classifiers and discrete choice models in predicting travel behavior: an empirical benchmark,” 2021. Wong and Farooq (2021) Wong, Melvin and Bilal Farooq, “ResLogit: A residual neural network logit model for data-driven choice modelling,” Transportation Research Part C: Emerging Technologies, 2021, 126 (January), 103050. van Cranenburgh, Sander, Shenhao Wang, Akshay Vij, Francisco Pereira, and Joan Walker, “Choice modelling in the age of machine learning - Discussion paper,” Journal of Choice Modelling, 2022, 42 (December 2021), 100340. Wang et al. (2021) Wang, Shenhao, Baichuan Mo, Stephane Hess, and Jinhua Zhao, “Comparing hundreds of machine learning classifiers and discrete choice models in predicting travel behavior: an empirical benchmark,” 2021. Wong and Farooq (2021) Wong, Melvin and Bilal Farooq, “ResLogit: A residual neural network logit model for data-driven choice modelling,” Transportation Research Part C: Emerging Technologies, 2021, 126 (January), 103050. Wang, Shenhao, Baichuan Mo, Stephane Hess, and Jinhua Zhao, “Comparing hundreds of machine learning classifiers and discrete choice models in predicting travel behavior: an empirical benchmark,” 2021. Wong and Farooq (2021) Wong, Melvin and Bilal Farooq, “ResLogit: A residual neural network logit model for data-driven choice modelling,” Transportation Research Part C: Emerging Technologies, 2021, 126 (January), 103050. Wong, Melvin and Bilal Farooq, “ResLogit: A residual neural network logit model for data-driven choice modelling,” Transportation Research Part C: Emerging Technologies, 2021, 126 (January), 103050.
  24. Train, Kenneth, Discrete Choice Methods with Simulation, 2 ed., Cambridge University Press, 2009. Train (2016)   , “Mixed logit with a flexible mixing distribution,” Journal of Choice Modelling, 2016, 19, 40–53. van Cranenburgh et al. (2022) van Cranenburgh, Sander, Shenhao Wang, Akshay Vij, Francisco Pereira, and Joan Walker, “Choice modelling in the age of machine learning - Discussion paper,” Journal of Choice Modelling, 2022, 42 (December 2021), 100340. Wang et al. (2021) Wang, Shenhao, Baichuan Mo, Stephane Hess, and Jinhua Zhao, “Comparing hundreds of machine learning classifiers and discrete choice models in predicting travel behavior: an empirical benchmark,” 2021. Wong and Farooq (2021) Wong, Melvin and Bilal Farooq, “ResLogit: A residual neural network logit model for data-driven choice modelling,” Transportation Research Part C: Emerging Technologies, 2021, 126 (January), 103050.   , “Mixed logit with a flexible mixing distribution,” Journal of Choice Modelling, 2016, 19, 40–53. van Cranenburgh et al. (2022) van Cranenburgh, Sander, Shenhao Wang, Akshay Vij, Francisco Pereira, and Joan Walker, “Choice modelling in the age of machine learning - Discussion paper,” Journal of Choice Modelling, 2022, 42 (December 2021), 100340. Wang et al. (2021) Wang, Shenhao, Baichuan Mo, Stephane Hess, and Jinhua Zhao, “Comparing hundreds of machine learning classifiers and discrete choice models in predicting travel behavior: an empirical benchmark,” 2021. Wong and Farooq (2021) Wong, Melvin and Bilal Farooq, “ResLogit: A residual neural network logit model for data-driven choice modelling,” Transportation Research Part C: Emerging Technologies, 2021, 126 (January), 103050. van Cranenburgh, Sander, Shenhao Wang, Akshay Vij, Francisco Pereira, and Joan Walker, “Choice modelling in the age of machine learning - Discussion paper,” Journal of Choice Modelling, 2022, 42 (December 2021), 100340. Wang et al. (2021) Wang, Shenhao, Baichuan Mo, Stephane Hess, and Jinhua Zhao, “Comparing hundreds of machine learning classifiers and discrete choice models in predicting travel behavior: an empirical benchmark,” 2021. Wong and Farooq (2021) Wong, Melvin and Bilal Farooq, “ResLogit: A residual neural network logit model for data-driven choice modelling,” Transportation Research Part C: Emerging Technologies, 2021, 126 (January), 103050. Wang, Shenhao, Baichuan Mo, Stephane Hess, and Jinhua Zhao, “Comparing hundreds of machine learning classifiers and discrete choice models in predicting travel behavior: an empirical benchmark,” 2021. Wong and Farooq (2021) Wong, Melvin and Bilal Farooq, “ResLogit: A residual neural network logit model for data-driven choice modelling,” Transportation Research Part C: Emerging Technologies, 2021, 126 (January), 103050. Wong, Melvin and Bilal Farooq, “ResLogit: A residual neural network logit model for data-driven choice modelling,” Transportation Research Part C: Emerging Technologies, 2021, 126 (January), 103050.
  25.   , “Mixed logit with a flexible mixing distribution,” Journal of Choice Modelling, 2016, 19, 40–53. van Cranenburgh et al. (2022) van Cranenburgh, Sander, Shenhao Wang, Akshay Vij, Francisco Pereira, and Joan Walker, “Choice modelling in the age of machine learning - Discussion paper,” Journal of Choice Modelling, 2022, 42 (December 2021), 100340. Wang et al. (2021) Wang, Shenhao, Baichuan Mo, Stephane Hess, and Jinhua Zhao, “Comparing hundreds of machine learning classifiers and discrete choice models in predicting travel behavior: an empirical benchmark,” 2021. Wong and Farooq (2021) Wong, Melvin and Bilal Farooq, “ResLogit: A residual neural network logit model for data-driven choice modelling,” Transportation Research Part C: Emerging Technologies, 2021, 126 (January), 103050. van Cranenburgh, Sander, Shenhao Wang, Akshay Vij, Francisco Pereira, and Joan Walker, “Choice modelling in the age of machine learning - Discussion paper,” Journal of Choice Modelling, 2022, 42 (December 2021), 100340. Wang et al. (2021) Wang, Shenhao, Baichuan Mo, Stephane Hess, and Jinhua Zhao, “Comparing hundreds of machine learning classifiers and discrete choice models in predicting travel behavior: an empirical benchmark,” 2021. Wong and Farooq (2021) Wong, Melvin and Bilal Farooq, “ResLogit: A residual neural network logit model for data-driven choice modelling,” Transportation Research Part C: Emerging Technologies, 2021, 126 (January), 103050. Wang, Shenhao, Baichuan Mo, Stephane Hess, and Jinhua Zhao, “Comparing hundreds of machine learning classifiers and discrete choice models in predicting travel behavior: an empirical benchmark,” 2021. Wong and Farooq (2021) Wong, Melvin and Bilal Farooq, “ResLogit: A residual neural network logit model for data-driven choice modelling,” Transportation Research Part C: Emerging Technologies, 2021, 126 (January), 103050. Wong, Melvin and Bilal Farooq, “ResLogit: A residual neural network logit model for data-driven choice modelling,” Transportation Research Part C: Emerging Technologies, 2021, 126 (January), 103050.
  26. van Cranenburgh, Sander, Shenhao Wang, Akshay Vij, Francisco Pereira, and Joan Walker, “Choice modelling in the age of machine learning - Discussion paper,” Journal of Choice Modelling, 2022, 42 (December 2021), 100340. Wang et al. (2021) Wang, Shenhao, Baichuan Mo, Stephane Hess, and Jinhua Zhao, “Comparing hundreds of machine learning classifiers and discrete choice models in predicting travel behavior: an empirical benchmark,” 2021. Wong and Farooq (2021) Wong, Melvin and Bilal Farooq, “ResLogit: A residual neural network logit model for data-driven choice modelling,” Transportation Research Part C: Emerging Technologies, 2021, 126 (January), 103050. Wang, Shenhao, Baichuan Mo, Stephane Hess, and Jinhua Zhao, “Comparing hundreds of machine learning classifiers and discrete choice models in predicting travel behavior: an empirical benchmark,” 2021. Wong and Farooq (2021) Wong, Melvin and Bilal Farooq, “ResLogit: A residual neural network logit model for data-driven choice modelling,” Transportation Research Part C: Emerging Technologies, 2021, 126 (January), 103050. Wong, Melvin and Bilal Farooq, “ResLogit: A residual neural network logit model for data-driven choice modelling,” Transportation Research Part C: Emerging Technologies, 2021, 126 (January), 103050.
  27. Wang, Shenhao, Baichuan Mo, Stephane Hess, and Jinhua Zhao, “Comparing hundreds of machine learning classifiers and discrete choice models in predicting travel behavior: an empirical benchmark,” 2021. Wong and Farooq (2021) Wong, Melvin and Bilal Farooq, “ResLogit: A residual neural network logit model for data-driven choice modelling,” Transportation Research Part C: Emerging Technologies, 2021, 126 (January), 103050. Wong, Melvin and Bilal Farooq, “ResLogit: A residual neural network logit model for data-driven choice modelling,” Transportation Research Part C: Emerging Technologies, 2021, 126 (January), 103050.
  28. Wong, Melvin and Bilal Farooq, “ResLogit: A residual neural network logit model for data-driven choice modelling,” Transportation Research Part C: Emerging Technologies, 2021, 126 (January), 103050.

Summary

We haven't generated a summary for this paper yet.

Slide Deck Streamline Icon: https://streamlinehq.com

Whiteboard

Dice Question Streamline Icon: https://streamlinehq.com

Open Problems

We haven't generated a list of open problems mentioned in this paper yet.

Lightbulb Streamline Icon: https://streamlinehq.com

Continue Learning

We haven't generated follow-up questions for this paper yet.

List To Do Tasks Checklist Streamline Icon: https://streamlinehq.com

Collections

Sign up for free to add this paper to one or more collections.

X Twitter Logo Streamline Icon: https://streamlinehq.com

Tweets

Sign up for free to view the 1 tweet with 0 likes about this paper.