apcluster (version 1.4.11)

cutree-methods: Cut Out Clustering Level from Cluster Hierarchy

Description

Cut out a clustering level from a cluster hierarchy

Usage

# S4 method for AggExResult
cutree(tree, k, h)
# S4 method for APResult
cutree(tree, k, h)

Value

returns an object of class ExClust

Arguments

tree

an object of class AggExResult containing a cluster hierarchy; may also be an object of class APResult

k

the level (i.e. the number of clusters) to be selected

h

alternatively, the level can be selected by specifying a cut-off for the merging objective

Author

Ulrich Bodenhofer & Andreas Kothmeier apcluster@bioinf.jku.at

Details

The function cutree extracts a clustering level from a cluster hierarchy stored in an AggExResult object. Which level is selected can be determined by one of the two arguments k and h (see above). If both k and h are specified, k overrides h. This is done largely analogous to the standard function cutree. The differences are (1) that only one level can be extracted at a time and (2) that an ExClust is returned instead of an index list.

The function cutree may further be used to convert an APResult object into an ExClust object. In this case, the arguments k and h are ignored.

References

http://www.bioinf.jku.at/software/apcluster/

Bodenhofer, U., Kothmeier, A., and Hochreiter, S. (2011) APCluster: an R package for affinity propagation clustering. Bioinformatics 27, 2463-2464. DOI: tools:::Rd_expr_doi("10.1093/bioinformatics/btr406").

See Also

AggExResult, ExClust

Examples

Run this code
## create two simple clusters
x <- c(1, 2, 3, 7, 8, 9)
names(x) <- c("a", "b", "c", "d", "e", "f")

## compute similarity matrix (negative squared distance)
sim <- negDistMat(x, r=2)

## run affinity propagation
aggres <- aggExCluster(sim)

## show details of clustering results
show(aggres)

## retrieve clustering with 2 clusters
cutree(aggres, 2)

## retrieve clustering with cut-off h=-1
cutree(aggres, h=-1)

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