fpc (version 2.1-11.1)

calinhara: Calinski-Harabasz index

Description

Calinski-Harabasz index for estimating the number of clusters, based on an observations/variables-matrix here. A distance based version is available through cluster.stats.

Usage

calinhara(x,clustering,cn=max(clustering))

Arguments

x

data matrix or data frame.

clustering

vector of integers. Clustering.

cn

integer. Number of clusters.

Value

Calinski-Harabasz statistic, which is (n-cn)*sum(diag(B))/((cn-1)*sum(diag(W))). B being the between-cluster means, and W being the within-clusters covariance matrix.

References

Calinski, T., and Harabasz, J. (1974) A Dendrite Method for Cluster Analysis, Communications in Statistics, 3, 1-27.

See Also

cluster.stats

Examples

Run this code
# NOT RUN {
  set.seed(98765)
  iriss <- iris[sample(150,20),-5]
  km <- kmeans(iriss,3)
  round(calinhara(iriss,km$cluster),digits=2)
# }

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