mle.cv(formula, data=list(), model=TRUE, x=FALSE,
y=FALSE, monte.carlo=500, split, contrasts=NULL)
mle.cv
is called from.TRUE
the corresponding components of the fit (the model frame, the model matrix, the
response.)contrasts.arg
of model.matrix.default
.mle.cv
returns an object of class
"mle.cv"
. The function summary
is used to obtain and print a summary of the results.
The object returned by mle.cv
are:
model=TRUE
a matrix with first column the dependent variable and the remain column the explanatory variables for the full model.x=TRUE
a matrix with the explanatory variables for the full model.y=TRUE
a vector with the dependent variable.mle.cv
are specified symbolically. A typical model has the form response ~ terms
where response
is the (numeric) response vector and terms
is a series of terms which specifies a linear predictor for response
. A terms specification of the form first+second
indicates all the terms in first
together with all the terms in second
with duplicates removed. A specification of the form first:second
indicates the the set of terms obtained by taking the interactions of all terms in first
with all terms in second
. The specification first*second
indicates the cross of first
and second
. This is the same as first+second+first:second
.library(wle)
data(hald)
cor(hald)
result <- mle.cv(y.hald~x.hald)
summary(result)
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