Abstract

Model-based clustering consists of fitting a mixture model to data and identifying each cluster with one of its components. Multivariate normal distributions are typically used. The number of clusters is usually determined from the data, often using BIC. In practice, however, individual clusters can be poorly fitted by Gaussian distributions, and in that case model-based clustering tends to represent one non-Gaussian cluster by a mixture of two or more Gaussian distributions. If the number of mixture components is interpreted as the number of clusters, this can lead to overestimation of the number of clusters. This is because BIC selects the number of mixture components needed to provide a good approximation to the density, rather than the number of clusters as such. We propose first selecting the total number of Gaussian mixture components, K, using BIC and then combining them hierarchically according to an entropy criterion. This yields a unique soft clustering for each number of clusters less than or equal to K. These clusterings can be compared on substantive grounds, and we also describe an automatic way of selecting the number of clusters via a piecewise linear regression fit to the rescaled entropy plot. We illustrate the method with simulated data and a flow cytometry dataset. Supplemental Materials are available on the journal Web site and described at the end of the paper.

Keywords

Mixture modelCluster analysisMathematicsDetermining the number of clusters in a data setGaussianEntropy (arrow of time)PiecewiseCluster (spacecraft)Computer scienceStatisticsCorrelation clusteringCURE data clustering algorithmPhysics

Affiliated Institutions

Related Publications

Publication Info

Year
2010
Type
article
Volume
19
Issue
2
Pages
332-353
Citations
332
Access
Closed

External Links

Social Impact

Social media, news, blog, policy document mentions

Citation Metrics

332
OpenAlex

Cite This

Jean-Patrick Baudry, Adrian E. Raftery, Gilles Celeux et al. (2010). Combining Mixture Components for Clustering. Journal of Computational and Graphical Statistics , 19 (2) , 332-353. https://doi.org/10.1198/jcgs.2010.08111

Identifiers

DOI
10.1198/jcgs.2010.08111