This article introduces a robust extension of the mixture of factor analysis models based on the restricted multivariate skew-t distribution, called mixtures of skew-t factor analysis (MSTFA) model. This model can be viewed as a powerful tool for model-based clustering of high-dimensional data where observations in each cluster exhibit non-normal features such as heavy-tailed noises and extreme skewness. Missing values may be frequently present due to the incomplete collection of data. A computationally feasible EM-type algorithm is developed to carry out maximum likelihood estimation and create single imputation of possible missing values under a missing at random mechanism. The numbers of factors and mixture components are determined via ...
Factor analysis is a statistical technique for data reduction and structure detection that tradition...
When data come from an unobserved heterogeneous population, common factor analysis is not appropriat...
Mixtures of factor analyzers (MFAs) have been popularly used to cluster the high-dimensional data. H...
The mixture of factor analyzers (MFA) model provides a powerful tool for analyzing high-dimensional...
A mixture of common skew-t factor analyzers model is introduced for model-based clustering of high-d...
This paper presents a novel framework for maximum likelihood (ML) estimation in skew-t factor analys...
Factor analysis is a classical data-reduction technique that seeks a potentially lower number of uno...
The mixture of factor analyzers (MFA) model provides a powerful tool for analyzing high-dimensional ...
In this paper, we introduce a mixture of skew-t factor analyzers as well as a family of mixture mode...
AbstractA mixture of skew-t factor analyzers is introduced as well as a family of mixture models bas...
The mixture of factor analyzers (MFA) model, by reducing the number of free parameters through its f...
Factor analysis is a classical data reduction technique that seeks a poten-tially lower number of un...
Mixtures of factor analyzers (MFA) provide a powerful tool for modelling high-dimensional datasets. ...
The talk will discuss the use of finite mixtures of multivariate skew- normal distributions as an ap...
Mixtures of t-factor analyzers have been broadly used for model-based density estimation and cluster...
Factor analysis is a statistical technique for data reduction and structure detection that tradition...
When data come from an unobserved heterogeneous population, common factor analysis is not appropriat...
Mixtures of factor analyzers (MFAs) have been popularly used to cluster the high-dimensional data. H...
The mixture of factor analyzers (MFA) model provides a powerful tool for analyzing high-dimensional...
A mixture of common skew-t factor analyzers model is introduced for model-based clustering of high-d...
This paper presents a novel framework for maximum likelihood (ML) estimation in skew-t factor analys...
Factor analysis is a classical data-reduction technique that seeks a potentially lower number of uno...
The mixture of factor analyzers (MFA) model provides a powerful tool for analyzing high-dimensional ...
In this paper, we introduce a mixture of skew-t factor analyzers as well as a family of mixture mode...
AbstractA mixture of skew-t factor analyzers is introduced as well as a family of mixture models bas...
The mixture of factor analyzers (MFA) model, by reducing the number of free parameters through its f...
Factor analysis is a classical data reduction technique that seeks a poten-tially lower number of un...
Mixtures of factor analyzers (MFA) provide a powerful tool for modelling high-dimensional datasets. ...
The talk will discuss the use of finite mixtures of multivariate skew- normal distributions as an ap...
Mixtures of t-factor analyzers have been broadly used for model-based density estimation and cluster...
Factor analysis is a statistical technique for data reduction and structure detection that tradition...
When data come from an unobserved heterogeneous population, common factor analysis is not appropriat...
Mixtures of factor analyzers (MFAs) have been popularly used to cluster the high-dimensional data. H...