Flexibility without foresight: the predictive limitations of mixture models
Econometrics
2025-10-13 v1
Abstract
Models allowing for random heterogeneity, such as mixed logit and latent class, are generally observed to obtain superior model fit and yield detailed insights into unobserved preference heterogeneity. Using theoretical arguments and two case studies on revealed and stated choice data, this paper highlights that these advantages do not translate into any benefits in forecasting, whether looking at prediction performance or the recovery of market shares. The only exception arises when using conditional distributions in making predictions for the same individuals included in the estimation sample, which obviously precludes any out-of-sample forecasting.
Cite
@article{arxiv.2510.09185,
title = {Flexibility without foresight: the predictive limitations of mixture models},
author = {Stephane Hess and Sander van Cranenburgh},
journal= {arXiv preprint arXiv:2510.09185},
year = {2025}
}