Maximum number of components included within each model.
If not specified, will use the maximum number possible (considering
cross-validation and special cases where n is smaller than p).
cvfolds
Number of cross-validation folds used in each model
for automatic parameter selection, default is 5.
reptimes
Number of models to build with Monte-Carlo resampling
or bootstrapping.
method
Resampling method. "mc" (Monte-Carlo resampling)
or "boot" (bootstrapping). Default is "mc".
ratio
Sampling ratio used when method = "mc".
parallel
Integer. Number of CPU cores to use.
Default is 1 (not parallelized).
Value
A list containing four components:
error.mean - error mean for all samples (absolute value)
error.median - error median for all samples
error.sd - error sd for all samples
predict.error.matrix - the original prediction error matrix
See Also
See enpls.fs for measuring feature importance with
ensemble partial least squares regressions.
See enpls.fit for fitting ensemble partial least
squares regression models.
# NOT RUN {data("alkanes")
x <- alkanes$x
y <- alkanes$y
set.seed(42)
od <- enpls.od(x, y, reptimes = 50)
print(od)
plot(od)
plot(od, criterion = "sd")
# }