MatrixMixtures - Model-Based Clustering via Matrix-Variate Mixture Models
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) <arXiv:2005.03861>. 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.