igraph (version 0.6.5-2)

compare.communities: Compares community structures using various metrics

Description

This function assesses the distance between two community structures.

Usage

## S3 method for class 'communities':
compare(comm1, comm2, method = c("vi", "nmi",
                                      "split.join", "rand",
                                      "adjusted.rand"))
## S3 method for class 'numeric':
compare(comm1, comm2, method = c("vi", "nmi",
                                      "split.join", "rand",
                                      "adjusted.rand"))

Arguments

comm1
A communities object containing a community structure; or a numeric vector, the membership vector of the first community structure. The membership vector should contain the community id of e
comm2
A communities object containing a community structure; or a numeric vector, the membership vector of the second community structure, in the same format as for the previous argument.
method
Character scalar, the comparison method to use. Possible values: vi is the variation of information (VI) metric of Meila (2003), nmi is the normalized mutual information measure proposed by Danon et al. (2005)

Value

  • A real number.

concept

Community structure

References

Meila M: Comparing clusterings by the variation of information. In: Scholkopf B, Warmuth MK (eds.). Learning Theory and Kernel Machines: 16th Annual Conference on Computational Learning Theory and 7th Kernel Workshop, COLT/Kernel 2003, Washington, DC, USA. Lecture Notes in Computer Science, vol. 2777, Springer, 2003. ISBN: 978-3-540-40720-1.

Danon L, Diaz-Guilera A, Duch J, Arenas A: Comparing community structure identification. J Stat Mech P09008, 2005.

van Dongen S: Performance criteria for graph clustering and Markov cluster experiments. Technical Report INS-R0012, National Research Institute for Mathematics and Computer Science in the Netherlands, Amsterdam, May 2000. Rand WM: Objective criteria for the evaluation of clustering methods. J Am Stat Assoc 66(336):846-850, 1971.

Hubert L and Arabie P: Comparing partitions. Journal of Classification 2:193-218, 1985.

See Also

walktrap.community, edge.betweenness.community, fastgreedy.community, spinglass.community for various community detection methods.

Examples

Run this code
g <- graph.famous("Zachary")
sg <- spinglass.community(g)
le <- leading.eigenvector.community(g)
compare(sg, le, method="rand")
compare(membership(sg), membership(le))

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