Supervised Principal Component Analysis

Dimension reduction of complex data with supervision from auxiliary information. The package contains a series of methods for different data types (e.g., multi-view or multi-way data) including the supervised singular value decomposition (SupSVD), supervised sparse and functional principal component (SupSFPC), supervised integrated factor analysis (SIFA) and supervised PARAFAC/CANDECOMP factorization (SupCP). When auxiliary data are available and potentially affect the intrinsic structure of the data of interest, the methods will accurately recover the underlying low-rank structure by taking into account the supervision from the auxiliary data. For more details, see the paper by Gen Li, .


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install.packages("SuperPCA")

0.1.0 by Jiayi Ji, 6 months ago


Browse source code at https://github.com/cran/SuperPCA


Authors: Gen Li <[email protected]> , Haocheng Ding <[email protected]> , Jiayi Ji <[email protected]>


Documentation:   PDF Manual  


MIT + file LICENSE license


Imports RSpectra, psych, fBasics, R.matlab, glmnet, MASS, matrixStats, timeSeries, stats, matlabr, spls, pracma, matlab

Depends on Matrix


See at CRAN