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r-moeclust 1.6.0
Propagated dependencies: r-vcd@1.4-13 r-nnet@7.3-20 r-mvnfast@0.2.8 r-mclust@6.1.1 r-matrixstats@1.5.0 r-lattice@0.22-7
Channel: guix-cran
Location: guix-cran/packages/m.scm (guix-cran packages m)
Home page: https://cran.r-project.org/package=MoEClust
Licenses: GPL 3+
Synopsis: Gaussian Parsimonious Clustering Models with Covariates and a Noise Component
Description:

Clustering via parsimonious Gaussian Mixtures of Experts using the MoEClust models introduced by Murphy and Murphy (2020) <doi:10.1007/s11634-019-00373-8>. This package fits finite Gaussian mixture models with a formula interface for supplying gating and/or expert network covariates using a range of parsimonious covariance parameterisations from the GPCM family via the EM/CEM algorithm. Visualisation of the results of such models using generalised pairs plots and the inclusion of an additional noise component is also facilitated. A greedy forward stepwise search algorithm is provided for identifying the optimal model in terms of the number of components, the GPCM covariance parameterisation, and the subsets of gating/expert network covariates.

Total results: 1