Learning Preferences from Conjoint Data: A Hybrid Structural Deep Learning Approach
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Abstract
Conjoint experiments randomize multidimensional profiles, yet political science applications typically report only nonparametric averages that do not recover counterfactual choices or individual tradeoffs.
We develop a hybrid structural approach for recovering individual preferences from conjoint data.
The estimator combines a flexible machine-learning mean preference function, via a deep netural network in our applications, with respondent-level empirical-Bayes updating in a logistic random utility model, allowing preferences to vary with observed characteristics while learning residual heterogeneity from repeated choices.
Double/debiased machine learning delivers valid inference for population-average preference parameters with any sufficiently accurate first-stage learner.
Across three applications, the method reveals heterogeneity reduced-form averages obscure: opposition to undemocratic behavior is broad but uneven in intensity, progressive tax preferences are widespread across partisan subgroups, and partisan polarization offsets the average gender effect in candidate choice.
The framework opens the door to core theoretical questions in political science by recovering substantively interpretable structural parameters.