I am looking for implementations of community detection algorithms, such as the Girvan-Newman algorithm (2002). I have visited the websites of several researchers in this field (Newman, Santo, etc.) but was unable to find any code. I imagine someone out there published implementations of these algorithms (maybe even a toolkit?), but I can't seem to find it.
Community detection algorithms are sometimes part of a library (such as JUNG for java) or a tool (see Gephi). When authors publish a new method, they do sometimes make their code available. For example, the Louvain and Infomap methods.
Side note: Girvan-Newman algorithm is sometimes still used, but it has mostly been replaced by faster and more accurate methods. For a good overview of the topic, I recommend Community detection algorithms: a comparative analysis or the longer Community detection in graphs (103 pages).
You should have a look at the igraph library:
- 7 community detection algorithms (including those mentionned above):
- Edgebetweenness (Girvan-Newman link centrality-based approach),
- Walktrap (Pons-Latapy random walk-based approach),
- Leading Eigenvectors (Newman's spectral approach),
- Fast Greedy (Clauset et. al modularity optimization),
- Label Propagation (Raghavan et. al),
- Louvain (Blondel et. al, modularity optimization),
- Spinglass (Reichardt-Bornholdt, modularity optimization),
- InfoMap (Rosvall-Bergstrom, compression-based approach).
- Other related functions: process modularity, deal with hierarchical structures, etc.
- Available in R, C and Python
- Open source
To my opinion, the most complete tool for community detection. For more details, also check: What are the differences between community detection algorithms in igraph?
You can try the SNAP library (Stanford Network Analysis Platform, http://snap.stanford.edu/), which includes Modularity, Girvan-Newman and Clauset-Newman-Moore algorithms. It's written in C++, and is under the BSD licence. As a number of papers have used it (see, http://snap.stanford.edu/papers.html), it should be good.