cv.spls {spls}R Documentation

Compute and plot cross-validated mean squared prediction error for SPLS regression

Description

Draw heatmap of v-fold cross-validated mean squared prediction error and return optimal eta (thresholding parameter) and K (number of hidden components).

Usage

cv.spls( x, y, fold=10, K, eta, kappa=0.5,
        select="pls2", fit="simpls",
        scale.x=TRUE, scale.y=FALSE, plot.it=TRUE )

Arguments

x Matrix of predictors.
y Vector or matrix of responses.
fold Number of cross-validation folds. Default is 10-folds.
K Number of hidden components.
eta Thresholding parameter. eta should be between 0 and 1.
kappa Parameter to control the effect of the concavity of the objective function and the closeness of original and surrogate direction vectors. kappa is relevant only when responses are multivariate. kappa should be between 0 and 0.5. Default is 0.5.
select PLS algorithm for variable selection. Alternatives are "pls2" or "simpls". Default is "pls2".
fit PLS algorithm for model fitting. Alternatives are "kernelpls", "widekernelpls", "simpls", or "oscorespls". Default is "simpls".
scale.x Scale predictors by dividing each predictor variable by its sample standard deviation?
scale.y Scale responses by dividing each response variable by its sample standard deviation?
plot.it Draw heatmap of cross-validated mean squared prediction error?

Value

Invisibly returns a list with components:

mspemat Matrix of cross-validated mean squared prediction error. Rows correspond to eta and columns correspond to the number of components (K).
eta.opt Optimal eta.
K.opt Optimal K.

Author(s)

Dongjun Chung, Hyonho Chun, and Sunduz Keles.

References

Chun, H. and Keles, S. (2009). "Sparse partial least squares for simultaneous dimension reduction and variable selection", To appear in Journal of the Royal Statistical Society - Series B (http://www.stat.wisc.edu/~keles/Papers/SPLS_Nov07.pdf).

See Also

print.spls, plot.spls, predict.spls, and coef.spls.

Examples

data(yeast)
set.seed(1)
# MSPE plot. eta is searched between 0.1 and 0.9 and
# number of hidden components is searched between 1 and 10
cv <- cv.spls( yeast$x, yeast$y, K = c(1:10), eta = seq(0.1,0.9,0.1) )
# Optimal eta and K
cv$eta.opt
cv$K.opt
(spls( yeast$x, yeast$y, eta=cv$eta.opt, K=cv$K.opt ))

[Package spls version 2.1-0 Index]