MixtureMissing - Robust and Flexible Model-Based Clustering for Data Sets with
Missing Values at Random
Implementations of various robust and flexible model-based
clustering methods for data sets with missing values at random.
Two main models are: Multivariate Contaminated Normal Mixture
(MCNM, Tong and Tortora, 2022,
<doi:10.1007/s11634-021-00476-1>) and Multivariate Generalized
Hyperbolic Mixture (MGHM, Wei et al., 2019,
<doi:10.1016/j.csda.2018.08.016>). Mixtures via some special or
limiting cases of the multivariate generalized hyperbolic
distribution are also included: Normal-Inverse Gaussian,
Symmetric Normal-Inverse Gaussian, Skew-Cauchy, Cauchy, Skew-t,
Student's t, Normal, Symmetric Generalized Hyperbolic,
Hyperbolic Univariate Marginals, Hyperbolic, and Symmetric
Hyperbolic.