pcaMethods (version 1.64.0)

nipalsPca: NIPALS PCA

Description

PCA by non-linear iterative partial least squares

Usage

nipalsPca(Matrix, nPcs = 2, varLimit = 1, maxSteps = 5000, threshold = 1e-06, ...)

Arguments

Matrix
Pre-processed (centered, scaled) numerical matrix samples in rows and variables as columns.
nPcs
Number of components that should be extracted.
varLimit
Optionally the ratio of variance that should be explained. nPcs is ignored if varLimit < 1
maxSteps
Defines how many iterations can be done before algorithm should abort (happens almost exclusively when there were some wrong in the input data).
threshold
The limit condition for judging if the algorithm has converged or not, specifically if a new iteration is done if $(T_{old} - T)^T(T_{old} - T) > \code{limit}$.
...
Only used for passing through arguments.

Value

A pcaRes object.

Details

Can be used for computing PCA on a numeric matrix using either the NIPALS algorithm which is an iterative approach for estimating the principal components extracting them one at a time. NIPALS can handle a small amount of missing values. It is not recommended to use this function directely but rather to use the pca() wrapper function.

References

Wold, H. (1966) Estimation of principal components and related models by iterative least squares. In Multivariate Analysis (Ed., P.R. Krishnaiah), Academic Press, NY, 391-420.

See Also

prcomp, princomp, pca

Examples

Run this code
data(metaboliteData)
mat <- prep(t(metaboliteData))
pc <- nipalsPca(mat, nPcs=2)
## better use pca()
pc <- pca(t(metaboliteData), method="nipals", nPcs=2)

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