heteromixgm:Copula Graphical Models for Heterogeneous Mixed Data
A multi-core R package that allows for the statistical modeling of multi-group multivariate mixed data using Gaussian
graphical models. Combining the Gaussian copula framework with
the fused graphical lasso penalty, the 'heteromixgm' package
can handle a wide variety of datasets found in various
sciences. The package also includes an option to perform model
selection using the AIC, BIC and EBIC information criteria, a
function that plots partial correlation graphs based on the
selected precision matrices, as well as simulate mixed
heterogeneous data for exploratory or simulation purposes and
one multi-group multivariate mixed agricultural dataset
pertaining to maize yields. The package implements the
methodological developments found in Hermes et al. (2024)
<doi:10.1080/10618600.2023.2289545>.