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I'm using R and igraph package to detect communities in graphs, but I haven't found a precise way of creating graphs with community features like the ones used in several papers about community detection.

I wish I could generate graphs using Girvan-Newman benchmark, so I could specify the k_out and k_in variables (the degree of links outside and inside the communities, respectively) and create such graphs.

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Use a stochastic blockmodel, http://igraph.org/r/doc/sample_sbm.html.

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  • Great! I've easily adapted sbm.game to create community structured graphs. I'd like to compare the community detection algorithms I'm developing, but I would need to know which node belongs to which community so I can compare it using Normalized Mutual information (compare(comm1,comm2,method="nmi")), do you know how can I do that? – Jon Cardoso Jun 16 '14 at 10:04
  • See igraph.org/r/doc/communities.html and igraph.org/r/doc/compare.communities.html. If you need more help with these, then please start a new question. – Gabor Csardi Jun 16 '14 at 13:07
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The above link (http://igraph.org/r/doc/sbm.game.html) doesn't work correctly. However, there is a LFR benchmark, which generalize the GN benchmark, available for this purpose. We can find it on https://sites.google.com/site/santofortunato/inthepress2.

The graph outputs of the benchmark can be imported directly into R by functions such as read.table or read.csv. The community information is also available as output of the benchmark. Hence, the community comparision function can be used.

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