A Multinomial Probit Model with Latent Factors: Identification and Interpretation without a Measurement System

Rémi Piatek, Miriam Gensowski

    Abstract

    We develop a parametrization of the multinomial probit model that yields greater insight into the underlying decision-making process, by decomposing the error terms of the utilities into latent factors and noise. The latent factors are identified without a measurement system, and they can be meaningfully linked to an economic model. We provide sufficient conditions that make this structure identified and interpretable. For inference, we design a Markov chain Monte Carlo sampler based on marginal data augmentation. A simulation exercise shows the good numerical performance of our sampler and reveals the practical importance of alternative identification restrictions. Our approach can generally be applied to any setting where researchers can specify an a priori structure on a few drivers of unobserved heterogeneity. One such example is the choice of combinations of two options, which we explore with real data on education and occupation pairs.
    Original languageEnglish
    Number of pages47
    Publication statusPublished - Jul 2017
    SeriesIZA Discussion Paper
    Number11042
    Volume2017

    Keywords

    • Faculty of Social Sciences
    • multinomial probit
    • latent factors
    • Bayesian analysis
    • marginal data augmentation
    • educational choice
    • occupational choice
    • C11
    • C25
    • C35

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