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Bibliographic Details
Main Authors: Giampino, Alice, Canale, Antonio, Nipoti, Bernardo
Format: Preprint
Published: 2024
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Online Access:https://arxiv.org/abs/2411.02276
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author Giampino, Alice
Canale, Antonio
Nipoti, Bernardo
author_facet Giampino, Alice
Canale, Antonio
Nipoti, Bernardo
contents Several approaches have been proposed in the literature for clustering multivariate ordinal data. These methods typically treat missing values as absent information, rather than recognizing them as valuable for profiling population characteristics. To address this gap, we introduce a Bayesian nonparametric model for co-clustering multivariate ordinal data that treats censored observations as informative, rather than merely missing. We demonstrate that this offers a significant improvement in understanding the underlying structure of the data. Our model exploits the flexibility of two independent Dirichlet processes, allowing us to infer potentially distinct subpopulations that characterize the latent structure of both subjects and variables. The ordinal nature of the data is addressed by introducing latent variables, while a matrix factorization specification is adopted to handle the high dimensionality of the data in a parsimonious way. The conjugate structure of the model enables an explicit derivation of the full conditional distributions of all the random variables in the model, which facilitates seamless posterior inference using a Gibbs sampling algorithm. We demonstrate the method's performance through simulations and by analyzing politician and movie ratings data.
format Preprint
id arxiv_https___arxiv_org_abs_2411_02276
institution arXiv
publishDate 2024
record_format arxiv
spellingShingle A Bayesian Model for Co-clustering Ordinal Data with Informative Missing Entries
Giampino, Alice
Canale, Antonio
Nipoti, Bernardo
Methodology
Several approaches have been proposed in the literature for clustering multivariate ordinal data. These methods typically treat missing values as absent information, rather than recognizing them as valuable for profiling population characteristics. To address this gap, we introduce a Bayesian nonparametric model for co-clustering multivariate ordinal data that treats censored observations as informative, rather than merely missing. We demonstrate that this offers a significant improvement in understanding the underlying structure of the data. Our model exploits the flexibility of two independent Dirichlet processes, allowing us to infer potentially distinct subpopulations that characterize the latent structure of both subjects and variables. The ordinal nature of the data is addressed by introducing latent variables, while a matrix factorization specification is adopted to handle the high dimensionality of the data in a parsimonious way. The conjugate structure of the model enables an explicit derivation of the full conditional distributions of all the random variables in the model, which facilitates seamless posterior inference using a Gibbs sampling algorithm. We demonstrate the method's performance through simulations and by analyzing politician and movie ratings data.
title A Bayesian Model for Co-clustering Ordinal Data with Informative Missing Entries
topic Methodology
url https://arxiv.org/abs/2411.02276