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ade4 (version 1.7-5)

randxval: Two-fold cross-validation

Description

Functions and classes to manage outputs of two-fold cross-validation for one (class randxval) or several (class krandxval) statistics

Usage

as.krandxval(RMSEc, RMSEv, quantiles = c(0.25, 0.75), names = colnames(RMSEc), call = match.call()) "print"(x, ...) as.randxval(RMSEc, RMSEv, quantiles = c(0.25, 0.75), call = match.call()) "print"(x, ...)

Arguments

RMSEc
a vector (class randxval) or a matrix (class krandxval) with the root-mean-square error of calibration (statistics as columns and repetions as rows)
RMSEv
a vector (class randxval) or a matrix (class krandxval) with the root-mean-square error of validation (statistics as columns and repetions as rows)
quantiles
a vector indicating the lower and upper quantiles to compute
names
a vector of names for the statistics
call
the matching call
x
an object of class randxval or krandxval
...
other arguments to be passed to methods

Value

randxval or krandxval

References

Stone M. (1974) Cross-validatory choice and assessment of statistical predictions. Journal of the Royal Statistical Society, 36, 111-147

See Also

testdim.multiblock

Examples

Run this code
## an example corresponding to 10 statistics and 100 repetitions
cv <- as.krandxval(RMSEc = matrix(rnorm(1000), nrow = 100), RMSEv =
matrix(rnorm(1000, mean = 1), nrow = 100))
cv
if(adegraphicsLoaded())
plot(cv) 

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