Factor-analytic Gaussian mixtures are often employed as a modelbased approach to clustering high-dimensional data. Typically, the numbers of clusters and latent factors must be fixed in advance of model fitting. The pair which optimises some model selection criterion is then chosen. For computational reasons, having the number of factors differ across clusters is rarely considered. Here the infinite mixture of infinite factor analysers (IMIFA) model is introduced. IMIFA employs a Pitman-Yor process prior to facilitate automatic inference of the number of clusters using the stick-breaking construction and a slice sampler. Automatic inference of the cluster-specific numbers of factors is achieved using multiplicative gamma process shrinkage p...
AbstractA mixture of skew-t factor analyzers is introduced as well as a family of mixture models bas...
Finite mixture models are being commonly used in a wide range of applications in practice concernin...
Finite mixture models are being increasingly used to model the distributions of a wide variety of ra...
Factor-analytic Gaussian mixtures are often employed as a model-based approach to clustering high-di...
Factor-analytic Gaussian mixtures are often employed as a modelbased approach to clustering high-dim...
Combined analysis of multiple data sources has increasing application interest, in particular for di...
Mixtures of t-factor analyzers have been broadly used for model-based density estimation and cluster...
A mixture of common skew-t factor analyzers model is introduced for model-based clustering of high-d...
Traditional statistical clustering procedures based on finite mixtures model require the number of m...
Motivation: Mixtures of factor analyzers enable model-based clustering to be undertaken for high-dim...
Finite mixture models are being commonly used in a wide range of applications in practice concerning...
Dimensionally reduced model-based clustering methods are recently receiving a wide interest in stati...
Infinite Gaussian mixture modeling (IGMM) is a modeling method that determines all the parameters of...
Abstract Finite mixture models are being commonly used in a wide range of ap-plications in practice ...
Dirichlet process mixture of Gaussians (DPMG) has been used in the literature for clustering and den...
AbstractA mixture of skew-t factor analyzers is introduced as well as a family of mixture models bas...
Finite mixture models are being commonly used in a wide range of applications in practice concernin...
Finite mixture models are being increasingly used to model the distributions of a wide variety of ra...
Factor-analytic Gaussian mixtures are often employed as a model-based approach to clustering high-di...
Factor-analytic Gaussian mixtures are often employed as a modelbased approach to clustering high-dim...
Combined analysis of multiple data sources has increasing application interest, in particular for di...
Mixtures of t-factor analyzers have been broadly used for model-based density estimation and cluster...
A mixture of common skew-t factor analyzers model is introduced for model-based clustering of high-d...
Traditional statistical clustering procedures based on finite mixtures model require the number of m...
Motivation: Mixtures of factor analyzers enable model-based clustering to be undertaken for high-dim...
Finite mixture models are being commonly used in a wide range of applications in practice concerning...
Dimensionally reduced model-based clustering methods are recently receiving a wide interest in stati...
Infinite Gaussian mixture modeling (IGMM) is a modeling method that determines all the parameters of...
Abstract Finite mixture models are being commonly used in a wide range of ap-plications in practice ...
Dirichlet process mixture of Gaussians (DPMG) has been used in the literature for clustering and den...
AbstractA mixture of skew-t factor analyzers is introduced as well as a family of mixture models bas...
Finite mixture models are being commonly used in a wide range of applications in practice concernin...
Finite mixture models are being increasingly used to model the distributions of a wide variety of ra...