Cross-validation for Choosing Tree Complexity
Runs a K-fold cross-validation experiment to find the deviance or
number of misclassifications as a function of the cost-complexity
parameter k
.
cv.tree(object, rand, FUN = prune.tree, K = 10, ...)
object |
An object of class |
rand |
Optionally an integer vector of the length the number of
cases used to create |
FUN |
The function to do the pruning. |
K |
The number of folds of the cross-validation. |
... |
Additional arguments to |
A copy of FUN
applied to object
, with component
dev
replaced by the cross-validated results from the
sum of the dev
components of each fit.
B. D. Ripley
data(cpus, package="MASS") cpus.ltr <- tree(log10(perf) ~ syct + mmin + mmax + cach + chmin + chmax, data=cpus) cv.tree(cpus.ltr, , prune.tree)
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