Computes leave-one-out or M-fold cross-validation scores on a two-dimensional
grid to determine optimal values for the parameters of regularization in
rcc.
tune.rcc(X, Y, grid1 = seq(0.001, 1, length = 5),
grid2 = seq(0.001, 1, length = 5),
validation = c("loo", "Mfold"),
folds = 10, plot = TRUE)numeric matrix or data frame \((n \times p)\), the observations on the \(X\) variables.
NAs are allowed.
numeric matrix or data frame \((n \times q)\), the observations on the \(Y\) variables.
NAs are allowed.
vector numeric defining the values of lambda1 and lambda2
at which cross-validation score should be computed. Defaults to
grid1=grid2=seq(0.001, 1, length=5).
character string. What kind of (internal) cross-validation method to use,
(partially) matching one of "loo" (leave-one-out) or "Mfolds" (M-folds). See Details.
positive integer. Number of folds to use if validation="Mfold". Defaults to
folds=10.
logical argument indicating whether a image map should be
plotted by calling the imgCV function.
The returned value is a list with components:
value of the parameters of regularization on which the cross-validation method reached it optimal.
the optimal cross-validation score reached on the grid.
original vectors grid1 and grid2.
matrix containing the cross-validation score computed on the grid.
If validation="Mfolds", M-fold cross-validation is performed by calling
Mfold. When folds is given, the elements of folds should be integer vectors
specifying the indices of the validation sample and the argument M is
ignored. Otherwise, the folds are generated. The number of cross-validation
folds is specified with the argument M.
If validation="loo",
leave-one-out cross-validation is performed by calling the
loo function. In this case the arguments folds and M are ignored.
The estimation of the missing values can be performed
by the reconstitution of the data matrix using the nipals function. Otherwise, missing
values are handled by casewise deletion in the rcc function.
image.tune.rcc and http://www.mixOmics.org for more details.
# NOT RUN {
data(nutrimouse)
X <- nutrimouse$lipid
Y <- nutrimouse$gene
## this can take some seconds
# }
# NOT RUN {
tune.rcc(X, Y, validation = "Mfold")
# }
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