Home
Scholarly Works
Parsimonious Gaussian mixture models
Journal article

Parsimonious Gaussian mixture models

Abstract

Parsimonious Gaussian mixture models are developed using a latent Gaussian model which is closely related to the factor analysis model. These models provide a unified modeling framework which includes the mixtures of probabilistic principal component analyzers and mixtures of factor of analyzers models as special cases.In particular, a class of eight parsimonious Gaussian mixture models which are based on the mixtures of factor analyzers model are introduced and the maximum likelihood estimates for the parameters in these models are found using an AECM algorithm. The class of models includes parsimonious models that have not previously been developed.These models are applied to the analysis of chemical and physical properties of Italian wines and the chemical properties of coffee; the models are shown to give excellent clustering performance.

Authors

McNicholas PD; Murphy TB

Journal

Statistics and Computing, Vol. 18, No. 3, pp. 285–296

Publisher

Springer Nature

Publication Date

September 1, 2008

DOI

10.1007/s11222-008-9056-0

ISSN

0960-3174

Contact the Experts team