Learn R Programming

MatrixMixtures (version 1.0.0)

Model-Based Clustering via Matrix-Variate Mixture Models

Description

Implements finite mixtures of matrix-variate contaminated normal distributions via expectation conditional-maximization algorithm for model-based clustering, as described in Tomarchio et al.(2020) . One key advantage of this model is the ability to automatically detect potential outlying matrices by computing their a posteriori probability of being typical or atypical points. Finite mixtures of matrix-variate t and matrix-variate normal distributions are also implemented by using expectation-maximization algorithms.

Copy Link

Version

Install

install.packages('MatrixMixtures')

Monthly Downloads

175

Version

1.0.0

License

GPL (>= 2)

Maintainer

Michael P.B. Gallaugher

Last Published

June 11th, 2021

Functions in MatrixMixtures (1.0.0)

MatrixMixt

Fitting for Matrix-Variate Mixture Models
SimX

Simulated Data