RSCA-package |
RSCA: A package for regularized simultaneous component analysis (SCA) for data integration. |
cv_sparseSCA |
A K-fold cross-validation procedure when common/distinctive processes are unknown with Lasso and Group Lasso penalties. |
cv_structuredSCA |
A K-fold cross-validation procedure when common/distinctive processes are known, with a Lasso penalty. |
DISCOsca |
DISCO-SCA rotation. |
Herring |
Herring data |
maxLGlasso |
An algorithm for determining the smallest values for Lasso and Group Lasso tuning parameters that yield all zeros. |
pca_gca |
PCA-GCA method for selecting the number of common and distinctive components. |
plot.CVsparseSCA |
Ploting Cross-validation results |
plot.CVstructuredSCA |
Cross-validation plot |
pre_process |
Standardize the given data matrix per column, over the rows, with multiple imputation for missing data. |
RSCA |
RSCA: A package for regularized simultaneous component analysis (SCA) for data integration. |
sparseSCA |
Variable selection with Lasso and Group Lasso with a multi-start procedure. |
structuredSCA |
Variable selection algorithm with a predefined component loading structure. |
summary.CVsparseSCA |
Display a summary of the results of 'cv_sparseSCA()'. |
summary.CVstructuredSCA |
Display a summary of the results of 'cv_structuredSCA()'. |
summary.DISCOsca |
Display a summary of the results of 'DISCOsca()'. |
summary.sparseSCA |
Display a summary of the results of 'sparseSCA()'. |
summary.structuredSCA |
Display a summary of the results of 'structuredSCA()'. |
summary.undoS |
Display a summary of the results of 'undoShrinkage()'. |
summary.VAF |
Display a summary of the results of 'VAF()'. |
TuckerCoef |
Tucker coefficient of congruence. |
undoShrinkage |
Undo shrinkage. |
VAF |
Proportion of variance accounted for (VAF) for each block and each principal component. |