Bayesian Deep Learning for Discrete Choice
Daniel F. Villarraga, Ricardo A. Daziano

TL;DR
This paper introduces a Bayesian deep learning model for discrete choice analysis that combines interpretability and uncertainty quantification, improving predictive performance and robustness in economic decision-making contexts.
Contribution
The paper presents a novel deep learning architecture integrated with Bayesian inference methods, specifically SGLD, tailored for discrete choice modeling with enhanced interpretability and uncertainty estimation.
Findings
Model achieves competitive predictive accuracy in simulations and real data.
Provides reliable uncertainty quantification for economic variables.
Demonstrates robustness in limited data scenarios.
Abstract
Discrete choice models (DCMs) are used to analyze individual decision-making in contexts such as transportation choices, political elections, and consumer preferences. DCMs play a central role in applied econometrics by enabling inference on key economic variables, such as marginal rates of substitution, rather than focusing solely on predicting choices on new unlabeled data. However, while traditional DCMs offer high interpretability and support for point and interval estimation of economic quantities, these models often underperform in predictive tasks compared to deep learning (DL) models. Despite their predictive advantages, DL models remain largely underutilized in discrete choice due to concerns about their lack of interpretability, unstable parameter estimates, and the absence of established methods for uncertainty quantification. Here, we introduce a deep learning model…
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