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mclust 5: Clustering, Classification and Density Estimation Using Gaussian Finite Mixture Models

Luca Scrucca, Michael Fop, Thomas Brendan Murphy, Adrian,E. Raftery

2016The R Journal3,017 citationsDOIOpen Access PDF

Abstract

Finite mixture models are being used increasingly to model a wide variety of random phenomena for clustering, classification and density estimation. mclust is a powerful and popular package which allows modelling of data as a Gaussian finite mixture with different covariance structures and different numbers of mixture components, for a variety of purposes of analysis. Recently, version 5 of the package has been made available on CRAN. This updated version adds new covariance structures, dimension reduction capabilities for visualisation, model selection criteria, initialisation strategies for the EM algorithm, and bootstrap-based inference, making it a full-featured R package for data analysis via finite mixture modelling.

Topics & Concepts

Mixture modelCluster analysisCovarianceComputer scienceDimensionality reductionModel selectionGaussianInferenceDimension (graph theory)Variety (cybernetics)Data miningR packageAlgorithmPattern recognition (psychology)Artificial intelligenceMathematicsStatisticsComputational scienceQuantum mechanicsPure mathematicsPhysicsBayesian Methods and Mixture ModelsAlgorithms and Data CompressionAdvanced Clustering Algorithms Research
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