freqweights (version 1.0.1)

hclustvfreq: Fast hierarchical, agglomerative clustering of frequency data

Description

This function implements a version of the hierarchical, agglomerative clustering hclust.vector focused on table of frequencies.

Usage

hclustvfreq(data, freq = NULL, method = "single", metric = "euclidean",
  p = NULL)

.hclustvfreq(tfq, method = "single", metric = "euclidean", p = NULL)

Arguments

data
any object that can be coerced into a double matrix
freq
a one-sided, single term formula specifying frequency weights
method
the agglomeration method to be used. This must be (an unambiguous abbreviation of) one of "single", "ward", "centroid" or "median".
metric
the distance measure to be used. This must be one of "euclidean", "maximum", "manhattan", "canberra", "binary" or "minkowski"
p
parameter for the Minkowski metric.
tfq
a frequency table

Details

Any variables in the formula are removed from the data set.

This function is a wrapper of hclust.vector to be used with tables of frequencies. It use the frequency weights as parameter members.

See Also

hclust.vector, link{tablefreq}

Examples

Run this code
library(dplyr)
library(fastcluster)

data <- iris[,1:3,drop=FALSE]
hc <- hclustvfreq(data, method="centroid",metric="euclidean")
cutree(hc,3) ## Different length than data

tfq <- tablefreq(iris[,1:3])
hc <- .hclustvfreq(tfq, method="centroid",metric="euclidean")
tfq$group <- cutree(hc,3)

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