I'm using the Walktrap community detection method to return a number (19 in this case) of clusters. I have a list of members which belong to one or more of these clusters.
I need a method to search each cluster for the presence of the members and return the percentage of matches found. ( e.g cluster = 0%, cluster =Y%.....cluster=Z%) Thus selecting the optimum cluster that represents the members on the list.
Once the optimum cluster is found, I need a method to count the number of members of the optimum cluster and from the original (19-1) clusters select another cluster that is nearest in size (number of members)
library(igraph) edges <- read.csv('http://dl.dropbox.com/u/23776534/Facebook%20%5BEdges%5D.csv') list<-read.csv("http://dl.dropbox.com/u/23776534/knownlist.csv") all<-graph.data.frame(edges) summary(all) all_wt<- walktrap.community(all, steps=6,modularity=TRUE,labels=TRUE) all_wt_memb <- community.to.membership(all,all_wt$merges,steps=which.max(all_wt$modularity)-1) all_wt_memb$csize > 176 13 204 24 9 263 16 2 8 4 12 8 9 19 15 3 6 2 1