CORElearn (version 1.54.2)

rfClustering: Random forest based clustering

Description

Creates a clustering of random forest training instances. Random forest provides proximity of its training instances based on their out-of-bag classification. This information is usually passed to visualizations (e.g., scaling) and attribute importance measures.

Usage

rfClustering(model, noClusters=4)

Arguments

model

a random forest model returned by CoreModel

noClusters

number of clusters

Value

An object of class pam representing the clustering (see ?pam.object for details), the most important being a vector of cluster assignments (named cluster) to training instances used to generate the model.

Details

The method calls pam function for clustering, initializing its distance matrix with random forest based similarity by calling rfProximity with argument model.

References

Leo Breiman: Random Forests. Machine Learning Journal, 45:5-32, 2001

See Also

CoreModel rfProximity pam

Examples

Run this code
# NOT RUN {
set<-iris
md<-CoreModel(Species ~ ., set, model="rf", rfNoTrees=30, maxThreads=1)
mdCluster<-rfClustering(md, 5)

destroyModels(md) # clean up

# }

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