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2023 Mixtures of Probit Regression Models with Overlapping Clusters
Saverio Ranciati, Veronica Vinciotti, Ernst C. Wit, Giuliano Galimberti
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Bayesian Anal. Advance Publication 1-25 (2023). DOI: 10.1214/23-BA1372

Abstract

Studies with binary outcomes on a heterogeneous population are quite common. Typically, the heterogeneity is modelled through varying effect coefficients within some binary regression setting combined with a clustering procedure. Most of the existing methods assign statistical units to distinct and non-overlapping clusters. However, there are scenarios where units exhibit a more complex organization and the clusters can be thought as partially overlapping. In this case, the standard approach does not work. In this paper, we define a mixture of regression models that allows overlapping clusters. This approach involves an overlap function that maps the regression coefficients, either at the unit or response level, of the parent clusters into the coefficients of the multiple allocation clusters. In order to deal with this intrinsic heterogeneity, regression analyses have to be stratified for different groups of observations or clusters. We present a computationally efficient Monte Carlo Markov Chain (MCMC) scheme for the case of a mixture of probit regressions. A simulation study shows the overall performance of the method. We conclude with two illustrative examples of modelling voting behavior, involving United States (US) Supreme Court justices over a number of topics and members of the United Kingdom (UK) parliament over divisions related to Brexit. These applications provide insights on the usefulness of the method in real applications. The method described can be extended to the case of a generic mixture of multivariate generalized linear models under overlapping clusters.

Funding Statement

This project was partially supported by the European Cooperation in Science and Technology, COST Action “European Cooperation for Statistics of Network Data Science” (CA15109). EW acknowledges funding by the Swiss National Science Foundation (SNSF grants 188534 and 192549).

Citation

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Saverio Ranciati. Veronica Vinciotti. Ernst C. Wit. Giuliano Galimberti. "Mixtures of Probit Regression Models with Overlapping Clusters." Bayesian Anal. Advance Publication 1 - 25, 2023. https://doi.org/10.1214/23-BA1372

Information

Published: 2023
First available in Project Euclid: 26 February 2023

Digital Object Identifier: 10.1214/23-BA1372

Keywords: Bayesian inference , Binary data , Heterogeneity , Mixture models , overlapping clusters , probit regression

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