Multiblock Sparse Multivariable Analysis
Cross-Validation
Hierarchical cluster analysis
Internal functions
Multiblock Sparse Matrix Analysis Package
Multiblock Sparse Partial Least Squares
Search for Number of Components
Parameters Search
Plot msma
Prediction
Regularized Parameters Search
Simulate Data sets
Structured Simulate Data sets
Summarizing Fits
Several functions can be used to analyze multiblock multivariable data. If the input is a single matrix, then principal components analysis (PCA) is implemented. If the input is a list of matrices, then multiblock PCA is implemented. If the input is two matrices, for exploratory and objective variables, then partial least squares (PLS) analysis is implemented. If the input is two lists of matrices, for exploratory and objective variables, then multiblock PLS analysis is implemented. Additionally, if an extra outcome variable is specified, then a supervised version of the methods above is implemented. For each method, sparse modeling is also incorporated. Functions for selecting the number of components and regularized parameters are also provided.