Mixture modelling for cluster analysis


Autoria(s): McLachlan, G. J.; Chang, S. U.
Contribuinte(s)

B. S. Everitt

Data(s)

01/01/2004

Resumo

Cluster analysis via a finite mixture model approach is considered. With this approach to clustering, the data can be partitioned into a specified number of clusters g by first fitting a mixture model with g components. An outright clustering of the data is then obtained by assigning an observation to the component to which it has the highest estimated posterior probability of belonging; that is, the ith cluster consists of those observations assigned to the ith component (i = 1,..., g). The focus is on the use of mixtures of normal components for the cluster analysis of data that can be regarded as being continuous. But attention is also given to the case of mixed data, where the observations consist of both continuous and discrete variables.

Identificador

http://espace.library.uq.edu.au/view/UQ:68550

Idioma(s)

eng

Publicador

Arnold

Palavras-Chave #Statistics & Probability #Health Care Sciences & Services #Medical Informatics #Em Algorithm #Likelihood #Analyzers #Criteria #Choice #Mathematical & Computational Biology #C1 #230204 Applied Statistics #780101 Mathematical sciences
Tipo

Journal Article