rpart {rpart} | R Documentation |
Fit a rpart
model
rpart(formula, data, weights, subset, na.action = na.rpart, method, model = FALSE, x = FALSE, y = TRUE, parms, control, cost, ...)
formula |
a formula, with a response but no interaction terms. |
data |
an optional data frame in which to interpret the variables named in the formula. |
weights |
optional case weights. |
subset |
optional expression saying that only a subset of the rows of the data should be used in the fit. |
na.action |
the default action deletes all observations for which
|
method |
one of Alternatively, |
model |
if logical: keep a copy of the model frame in the result?
If the input value for |
x |
keep a copy of the |
y |
keep a copy of the dependent variable in the result. If
missing and |
parms |
optional parameters for the splitting function. |
control |
a list of options that control details of the
|
cost |
a vector of non-negative costs, one for each variable in the model. Defaults to one for all variables. These are scalings to be applied when considering splits, so the improvement on splitting on a variable is divided by its cost in deciding which split to choose. |
... |
arguments to |
This differs from the tree
function in S mainly in its handling
of surrogate variables. In most details it follows Breiman
et. al. quite closely. R package tree provides a
re-implementation of tree
.
An object of class rpart
. See rpart.object
.
Breiman, Friedman, Olshen, and Stone. (1984) Classification and Regression Trees. Wadsworth.
rpart.control
, rpart.object
,
summary.rpart
, print.rpart
fit <- rpart(Kyphosis ~ Age + Number + Start, data=kyphosis) fit2 <- rpart(Kyphosis ~ Age + Number + Start, data=kyphosis, parms=list(prior=c(.65,.35), split='information')) fit3 <- rpart(Kyphosis ~ Age + Number + Start, data=kyphosis, control=rpart.control(cp=.05)) par(mfrow=c(1,2), xpd=NA) # otherwise on some devices the text is clipped plot(fit) text(fit, use.n=TRUE) plot(fit2) text(fit2, use.n=TRUE)