RGCCA - Regularized and Sparse Generalized Canonical Correlation
Analysis for Multiblock Data
Multi-block data analysis concerns the analysis of several
sets of variables (blocks) observed on the same group of
individuals. The main aims of the RGCCA package are: to study
the relationships between blocks and to identify subsets of
variables of each block which are active in their relationships
with the other blocks. This package allows to (i) run R/SGCCA
and related methods, (ii) help the user to find out the optimal
parameters for R/SGCCA such as regularization parameters (tau
or sparsity), (iii) evaluate the stability of the RGCCA results
and their significance, (iv) build predictive models from the
R/SGCCA. (v) Generic print() and plot() functions apply to all
these functionalities.