Imputes univariate missing data using classification and regression trees.
mice.impute.cart(y, ry, x, wy = NULL, minbucket = 5, cp = 1e-04, ...)
Vector with imputed data, same type as y
, and of length
sum(wy)
Numeric vector of length sum(!ry)
with imputations
Vector to be imputed
Logical vector of length length(y)
indicating the
the subset y[ry]
of elements in y
to which the imputation
model is fitted. The ry
generally distinguishes the observed
(TRUE
) and missing values (FALSE
) in y
.
Numeric design matrix with length(y)
rows with predictors for
y
. Matrix x
may have no missing values.
Logical vector of length length(y)
. A TRUE
value
indicates locations in y
for which imputations are created.
The minimum number of observations in any terminal node used.
See rpart.control
for details.
Complexity parameter. Any split that does not decrease the overall
lack of fit by a factor of cp is not attempted. See
rpart.control
for details.
Other named arguments passed down to rpart()
.
Lisa Doove, Stef van Buuren, Elise Dusseldorp, 2012
Imputation of y
by classification and regression trees. The procedure
is as follows:
Fit a classification or regression tree by recursive partitioning;
For each ymis
, find the terminal node they end up according to the fitted tree;
Make a random draw among the member in the node, and take the observed value from that draw as the imputation.
Doove, L.L., van Buuren, S., Dusseldorp, E. (2014), Recursive partitioning for missing data imputation in the presence of interaction Effects. Computational Statistics & Data Analysis, 72, 92-104.
Breiman, L., Friedman, J. H., Olshen, R. A., and Stone, C. J. (1984), Classification and regression trees, Monterey, CA: Wadsworth & Brooks/Cole Advanced Books & Software.
Van Buuren, S. (2018). Flexible Imputation of Missing Data. Second Edition. Chapman & Hall/CRC. Boca Raton, FL.
mice
, mice.impute.rf
,
rpart
, rpart.control
Other univariate imputation functions:
mice.impute.lasso.logreg()
,
mice.impute.lasso.norm()
,
mice.impute.lasso.select.logreg()
,
mice.impute.lasso.select.norm()
,
mice.impute.lda()
,
mice.impute.logreg()
,
mice.impute.logreg.boot()
,
mice.impute.mean()
,
mice.impute.midastouch()
,
mice.impute.mnar.logreg()
,
mice.impute.mpmm()
,
mice.impute.norm()
,
mice.impute.norm.boot()
,
mice.impute.norm.nob()
,
mice.impute.norm.predict()
,
mice.impute.pmm()
,
mice.impute.polr()
,
mice.impute.polyreg()
,
mice.impute.quadratic()
,
mice.impute.rf()
,
mice.impute.ri()
imp <- mice(nhanes2, meth = "cart", minbucket = 4)
plot(imp)
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