method in classRandomForestSemisupervised used to build a Decision Tree
# S4 method for RandomForestSemisupervised
fit_random_forest(
object,
X,
y,
mtry = 2,
trees = 500,
min_n = 2,
w = 0.5,
replace = TRUE,
tree_max_depth = Inf,
sampsize = if (replace) nrow(X) else ceiling(0.632 * nrow(X)),
min_samples_leaf = if (!is.null(y) && !is.factor(y)) 5 else 1,
allowParallel = TRUE
)
A RandomForestSemisupervised object
A object that can be coerced as data.frame. Training instances
A vector with the labels of the training instances. In this vector
the unlabeled instances are specified with the value NA
.
number of features in each decision tree
number of trees. Default is 5
number of minimum samples in each tree
weight parameter ranging from 0 to 1
replacing type in sampling
maximum tree depth. Default is Inf
Size of sample. Default if (replace) nrow(x) else ceiling(.632*nrow(x))
the minimum number of any terminal leaf node
Execute Random Forest in parallel if doParallel is loaded. Default is TRUE
list of decision trees