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Learning Preferences from Conjoint Data: A Structural Deep Learning Approach

Author

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  • Avidit Acharya
  • Jens Hainmueller
  • Yiqing Xu

Abstract

Conjoint experiments randomize multidimensional profiles, offering a powerful design for recovering structural preference parameters -- including marginal rates of substitution, willingness to pay, and the distribution of preferences across a population. Yet the dominant approach in political science has focused on nonparametric causal estimands that do not leverage this potential. We propose a structural approach that embeds a deep neural network within a random utility logit model, allowing preference parameters to vary as a fully flexible function of respondent characteristics. The neural network addresses the concern that a parametric specification may not capture the true data generating process, while double/debiased machine learning provides valid inference on average preference parameters. We apply our method to three prominent conjoint studies and find rich preference heterogeneity masked by reduced-form averages: a near-zero gender effect coexists with 83% preferring female candidates, opposition to undemocratic behavior is near-universal but varies sharply in intensity, and progressive tax preferences cut across every partisan subgroup.

Suggested Citation

  • Avidit Acharya & Jens Hainmueller & Yiqing Xu, 2026. "Learning Preferences from Conjoint Data: A Structural Deep Learning Approach," Papers 2604.10845, arXiv.org, revised May 2026.
  • Handle: RePEc:arx:papers:2604.10845
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    References listed on IDEAS

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    7. Bansak, Kirk & Hainmueller, Jens & Hopkins, Daniel J. & Yamamoto, Teppei, 2023. "Using Conjoint Experiments to Analyze Election Outcomes: The Essential Role of the Average Marginal Component Effect," Political Analysis, Cambridge University Press, vol. 31(4), pages 500-518, October.
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