The Mixture of Latent Trait Analyzers (MLTA) represents a model-based clustering approach specifically tailored to multivariate categorical data. It accommodates clustering of units through a finite mixture specification, while also accounting for the residual latent vari- ability of units within each cluster through a set of multidimensional latent variables (traits). The original formulation is extended to account for the effect of concomitant variables (covariates). These are allowed to affect cluster formation, the conditional outcome distribution, both (as in standard mixtures of experts models), or neither. Overall, the proposal improves the model’s flexibility and its capacity to reflect the complexity of the data

Mixture of Experts Latent Trait Analyzers / Failli, Dalila; Francesca Marino, Maria; Martella, Francesca. - (2025), pp. 272-280. [10.1007/978-3-032-03042-9].

Mixture of Experts Latent Trait Analyzers

Francesca MArtella
2025

Abstract

The Mixture of Latent Trait Analyzers (MLTA) represents a model-based clustering approach specifically tailored to multivariate categorical data. It accommodates clustering of units through a finite mixture specification, while also accounting for the residual latent vari- ability of units within each cluster through a set of multidimensional latent variables (traits). The original formulation is extended to account for the effect of concomitant variables (covariates). These are allowed to affect cluster formation, the conditional outcome distribution, both (as in standard mixtures of experts models), or neither. Overall, the proposal improves the model’s flexibility and its capacity to reflect the complexity of the data
2025
Supervised and Unsupervised Statistical Data Analysis. CLADAG-VOC 2025. Studies in Classification, Data Analysis, and Knowledge Organization.
978-3-032-03041-2
model-based clustering; finite mixtures; concomitant variables; EM algorithm; variational inference
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Mixture of Experts Latent Trait Analyzers / Failli, Dalila; Francesca Marino, Maria; Martella, Francesca. - (2025), pp. 272-280. [10.1007/978-3-032-03042-9].
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Utilizza questo identificativo per citare o creare un link a questo documento: https://hdl.handle.net/11573/1748915
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