chemometrics (version 1.4.2)

prm: Robust PLS

Description

Robust PLS by partial robust M-regression.

Usage

prm(X, y, a, fairct = 4, opt = "l1m",usesvd=FALSE)

Value

coef

vector with regression coefficients

intercept

coefficient for intercept

wy

vector of length(y) with residual weights

wt

vector of length(y) with weights for leverage

w

overall weights

scores

matrix with PLS X-scores

loadings

matrix with PLS X-loadings

fitted.values

vector with fitted y-values

mx

column means of X

my

mean of y

Arguments

X

predictor matrix

y

response variable

a

number of PLS components

fairct

tuning constant, by default fairct=4

opt

if "l1m" the mean centering is done by the l1-median, otherwise if "median" the coordinate-wise median is taken

usesvd

if TRUE, SVD will be used if X has more columns than rows

Author

Peter Filzmoser <P.Filzmoser@tuwien.ac.at>

Details

M-regression is used to robustify PLS, with initial weights based on the FAIR weight function.

References

S. Serneels, C. Croux, P. Filzmoser, and P.J. Van Espen. Partial robust M-regression. Chemometrics and Intelligent Laboratory Systems, Vol. 79(1-2), pp. 55-64, 2005.

See Also

mvr

Examples

Run this code
data(PAC)
res <- prm(PAC$X,PAC$y,a=5)

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