Bayesian conjugacy in probit, tobit, multinomial probit and extensions: A review and new results
Niccol\`o Anceschi, Augusto Fasano, Daniele Durante, Giacomo Zanella

TL;DR
This paper reviews and extends Bayesian conjugacy results for models like probit, tobit, and multinomial probit, revealing a unifying structure that enables more efficient inference methods and broader applicability.
Contribution
It proves that likelihoods in these models share a conjugacy with the SUN distribution, unifying and extending previous results, and enabling new inference techniques.
Findings
Unified conjugacy with SUN distribution for multiple models
Development of exact i.i.d. samplers for SUN posteriors
Enhanced scalable approximations using VB and EP methods
Abstract
A broad class of models that routinely appear in several fields can be expressed as partially or fully discretized Gaussian linear regressions. Besides including basic Gaussian response settings, this class also encompasses probit, multinomial probit and tobit regression, among others, thereby yielding to one of the most widely-implemented families of models in applications. The relevance of such representations has stimulated decades of research in the Bayesian field, mostly motivated by the fact that, unlike for Gaussian linear regression, the posterior distribution induced by such models does not seem to belong to a known class, under the commonly-assumed Gaussian priors for the coefficients. This has motivated several solutions for posterior inference relying on sampling-based strategies or on deterministic approximations that, however, still experience computational and accuracy…
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Taxonomy
TopicsStatistical Methods and Bayesian Inference · Statistical Distribution Estimation and Applications · Advanced Statistical Methods and Models
