6

I am working with Community Detection in graphs. I have been through the different community detection algorithms implemented in igraph and plotting the community structures. Now after getting the communities object for different algorithms, I want to compare the algorithms based on different measures like density,cut ratio, coverage. (I know that modularity is already implemented). I can obtain a subgraph and then calculate the intra-cluster density but to find the inter-cluster density, I dont not know how to proceed. This is the code I have been using to find intra-cluster density:

karate <- graph.famous("Zachary")
wckarate <- walktrap.community(karate) #any algorithm
subg1<-induced.subgraph(karate, which(membership(wckarate)==1)) #membership id differs for each cluster
intradensity1 <- ecount(subg1)/ecount(karate) #for each cluster

Similarly I could proceed for each cluster and add all the densities or take the average of the all. My question is that if the number of communities is very large, then how to proceed?

And if I want to extract the number of edges between different communities, is there a nice way to extract the number of edges?

Please pardon me if this question is already asked. I am novice to igraph and R.

  • 1
    Welcome to SO and thank you for including a reproducible example with your question. – MrFlick Jul 1 '14 at 15:25
  • @MrFlick Thanks for your reply and wishes. It really helped me a lot though it took me some time to understand the function. – shubhamagarwal92 Jul 2 '14 at 9:23
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Well, we can just adapt your code to loop over the different subgroups

karate <- graph.famous("Zachary")
wckarate <- walktrap.community(karate) #any algorithm
sapply(unique(membership(wckarate)), function(g) {
    subg1<-induced.subgraph(karate, which(membership(wckarate)==g)) #membership id differs for each cluster
    ecount(subg1)/ecount(karate)
})

and as far as getting the edges between the communities, you could do

#get all combinations of communities
cs <- data.frame(combn(unique(membership(wckarate)),2))
cx <- sapply(cs, function(x) {
    es<-E(karate)[V(karate)[membership(wckarate)==x[1]] %--% 
              V(karate)[membership(wckarate)==x[2]]]    
    length(es)
})
cbind(t(cs),cx)

Also you can plot the communities to make sure that looks reasonable

plot.communities(wckarate, karate)

enter image description here

  • I tried to modify the function to calculate intra cluster edges instead of finding subgraphs but it is not working, could you please help: 'cx <- sapply(unique(membership(multilevel)), function(x) { es<-E(g)[V(g)[membership(multilevel)==x] V(g)[membership(multilevel)==x] length(es) }' – shubhamagarwal92 Jul 2 '14 at 9:38

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