Package: EESPCA 0.8.0

H. Robert Frost

EESPCA: Eigenvectors from Eigenvalues Sparse Principal Component Analysis (EESPCA)

Contains logic for computing sparse principal components via the EESPCA method, which is based on an approximation of the eigenvector/eigenvalue identity. Includes logic to support execution of the TPower and rifle sparse PCA methods, as well as logic to estimate the sparsity parameters used by EESPCA, TPower and rifle via cross-validation to minimize the out-of-sample reconstruction error. H. Robert Frost (2021) <doi:10.1080/10618600.2021.1987254>.

Authors:H. Robert Frost [aut, cre]

EESPCA_0.8.0.tar.gz
EESPCA_0.8.0.zip(r-4.7)EESPCA_0.8.0.zip(r-4.6)EESPCA_0.8.0.zip(r-4.5)
EESPCA_0.8.0.tgz(r-4.6-any)EESPCA_0.8.0.tgz(r-4.5-any)
EESPCA_0.8.0.tar.gz(r-4.7-any)EESPCA_0.8.0.tar.gz(r-4.6-any)
EESPCA_0.8.0.tgz(r-4.6-emscripten)
manual.pdf |manual.html
card.svg |card.png
EESPCA/json (API)
NEWS

# Install 'EESPCA' in R:
install.packages('EESPCA', repos = c('https://cranhaven.r-universe.dev', 'https://cloud.r-project.org'))

Bug tracker:https://github.com/cranhaven/cranhaven.r-universe.dev/issues

On CRAN:

Conda:

archivedpackagesr-universe

2.70 score 5 stars 2 scripts 192 downloads 12 exports 3 dependencies

Last updated from:0a32e2d947 (on package/EESPCA). Checks:9 OK. Indexed: no.

TargetResultTimeFilesSyslog
linux-devel-x86_64OK91
source / vignettesOK143
linux-release-x86_64OK121
macos-release-arm64OK88
macos-oldrel-arm64OK76
windows-develOK97
windows-releaseOK88
windows-oldrelOK68
wasm-releaseOK90

Exports:computeApproxNormSquaredEigenvectorcomputeResidualMatrixeespcaeespcaCVeespcaForKpowerIterationreconstructreconstructionErrorrifleInitriflePCACVtpowertpowerPCACV

Dependencies:MASSPMArifle

EESPCA example

Rendered fromEESPCA_Example.Rnwusingutils::Sweaveon May 27 2026.

Last update: 2026-05-27
Started: 2026-05-27