Concepedia

Publication | Closed Access

Variable selection in clustering via Dirichlet process mixture models

171

Citations

30

References

2006

Year

Abstract

The increased collection of high-dimensional data in various fields has raised a strong interest in clustering algorithms and variable selection procedures. In this paper, we propose a model-based method that addresses the two problems simultaneously. We introduce a latent binary vector to identify discriminating variables and use Dirichlet process mixture models to define the cluster structure. We update the variable selection index using a Metropolis algorithm and obtain inference on the cluster structure via a split-merge Markov chain Monte Carlo technique. We explore the performance of the methodology on simulated data and illustrate an application with a DNA microarray study. Copyright 2006, Oxford University Press.

References

YearCitations

Page 1