Mixture of Latent Trait Analyzers for Model-Based Clustering of Categorical Data
Isabella Gollini, Thomas Brendan Murphy

TL;DR
This paper introduces a mixture of latent trait analyzers model for clustering categorical data, combining discrete and continuous latent variables to improve group detection and dependence modeling.
Contribution
It extends latent class analysis by incorporating continuous latent traits and develops a variational method for efficient model fitting.
Findings
The model outperforms latent class and latent trait analysis in fit quality.
It provides intuitive and meaningful clustering results.
Demonstrated on survey and voting data sets.
Abstract
Model-based clustering methods for continuous data are well established and commonly used in a wide range of applications. However, model-based clustering methods for categorical data are less standard. Latent class analysis is a commonly used method for model-based clustering of binary data and/or categorical data, but due to an assumed local independence structure there may not be a correspondence between the estimated latent classes and groups in the population of interest. The mixture of latent trait analyzers model extends latent class analysis by assuming a model for the categorical response variables that depends on both a categorical latent class and a continuous latent trait variable; the discrete latent class accommodates group structure and the continuous latent trait accommodates dependence within these groups. Fitting the mixture of latent trait analyzers model is…
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Taxonomy
TopicsBayesian Methods and Mixture Models · Statistical Methods and Bayesian Inference · Advanced Clustering Algorithms Research
