Discrete Latent Variable Models

Posted: 24 Mar 2022

See all articles by Francesco Bartolucci

Francesco Bartolucci

University of Perugia

Silvia Pandolfi

University of Perugia

Fulvia Pennoni

Department of Statistics and Quantitative Methods University of Milano-Bicocca

Date Written: March 2022

Abstract

We review the discrete latent variable approach, which is very popular in statistics and related fields. It allows us to formulate interpretable and flexible models that can be used to analyze complex datasets in the presence of articulated dependence structures among variables. Specific models including discrete latent variables are illustrated, such as finite mixture, latent class, hidden Markov, and stochastic block models. Algorithms for maximum likelihood and Bayesian estimation of these models are reviewed, focusing, in particular, on the expectation–maximization algorithm and the Markov chain Monte Carlo method with data augmentation. Model selection, particularly concerning the number of support points of the latent distribution, is discussed. The approach is illustrated by summarizing applications available in the literature; a brief review of the main software packages to handle discrete latent variable models is also provided. Finally, some possible developments in this literature are suggested.

Suggested Citation

Bartolucci, Francesco and Pandolfi, Silvia and Pennoni, Fulvia, Discrete Latent Variable Models (March 2022). Annual Review of Statistics and Its Application, Vol. 9, Issue 1, pp. 425-452, 2022, Available at SSRN: https://ssrn.com/abstract=4065370 or http://dx.doi.org/10.1146/annurev-statistics-040220-091910

Francesco Bartolucci

University of Perugia ( email )

Via Pascoli 22
Perigoa, 06121
Italy

Silvia Pandolfi

University of Perugia ( email )

Via Pascoli 22
Perigoa, 06121
Italy

Fulvia Pennoni (Contact Author)

Department of Statistics and Quantitative Methods University of Milano-Bicocca ( email )

Piazza dell’Ateneo Nuovo 1, 20126 Milano
Milano, 20126
Italy

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