Title of article :
On Model-Based Clustering, Classification, and Discriminant Analysis
Author/Authors :
McNicholas, Paul D. University of Guelph - Department of Mathematics and Statistics, Canada
Abstract :
The use of mixture models for clustering and classification has burgeoned into an important subfield of multivariate analysis. These approaches have been around for a half-century or so, with significant activity in the area over the past decade. The primary focus of this paper is to review work in model-based clustering, classification, and discriminant analysis, with particular attention being paid to two techniques that can be implemented using respective R packages. Parameter estimation and model selection are also discussed. The paper concludes with a summary, discussion, and some thoughts on future work
Keywords :
Classification , clustering , discriminant analysis , mclust , mixture models , model , based clustering , model selection , parameter estimation , pgmm
Journal title :
Journal of the Iranian Statistical Society (JIRSS)
Journal title :
Journal of the Iranian Statistical Society (JIRSS)