This R package gathers together several functions that can be used for copula-based measuring of dependence between a finite amount of random vectors.
In particular, several estimation procedures are implemented for the class of phi-dependence measures, including Gaussian copula and hierarchical Archimedean copula methods, as studied in
and a semi-parametric meta-elliptical method and fully non-parametric methods, as investigated in
The latter reference also discusses an algorithm for hierarchical variable clustering based on multivariate similarities between random vectors, which is implemented in this R package as well. Next to this, functions for Bures-Wasserstein dependence coefficients and Gaussian copula correlation matrix penalization techniques, as discussed in
are implemented as well.
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