# evaluation of community detection algorithm

I am using `R` and the `IGraph` package. my approach is a community detection algorithm based on the eigenvectors centrality . To assess the results of my algorithm, I will use the following evaluation metrics: `NMI` (Normalized Mutual Information), `Purity`, `ARI` (Adjusted Rand Index). but these parameters require the comparison of two communities structures.

``````compare(comm1, comm2, method = c("vi", "nmi","split.join", "rand","adjusted.rand"))
``````

Can you offer me one or two algorithms with which I could compare my own?

And how can i get the `Purity` metric?

Thanks you

• please take a look at this question , the algorithm listed in there and also igraph manual as well. – academic.user Mar 25 '15 at 13:45
• Ok, thanks you. – Sasa88 Mar 25 '15 at 15:19
• Note that when evaluating your algorithm, it is best to compare the obtained community structures with some kind of a "ground truth" and not the result of some other algorithm - comparing your result with another algorithm would only tell you whether your algorithm agrees with the other one, and not whether your algorithm agrees with the ground truth that should have been discovered from the data. – Tamás Mar 25 '15 at 19:16
• @Tamás, effectively, i find in litterature that it's better to compare your algorithm results with ground truth community structure. but i don't know how can i do it. where can i get the real community structure of for example "zachary Karaté club" in R. Help me please. There is a method in R with which i can get the real community structure?? – Sasa88 Mar 26 '15 at 10:04
• If there were such a method, you wouldn't need community detection algorithms at all ;) You need a data set for which the ground truth is specified a priori. For what it's worth, the Zachary karate club dataset is one such dataset; download the data from here and check the vertex attribute named `Faction`: nexus.igraph.org/api/dataset_info?id=1&format=html – Tamás Mar 26 '15 at 10:39