Abstract
We report on an exceptionally accurate spin-glass-type Potts model for community detection. With a simple algorithm, we find that our approach is at least as accurate as the best currently available algorithms and robust to the effects of noise. It is also competitive with the best currently available algorithms in terms of speed and size of solvable systems. We find that the computational demand often exhibits superlinear scaling where is the number of edges in the system, and we have applied the algorithm to synthetic systems as large as nodes and over edges. A previous stumbling block encountered by popular community detection methods is the so-called “resolution limit.” Being a “local” measure of community structure, our Potts model is free from this resolution-limit effect, and it further remains a local measure on weighted and directed graphs. We also address the mitigation of resolution-limit effects for two other popular Potts models.
5 More- Received 19 June 2009
DOI:https://doi.org/10.1103/PhysRevE.81.046114
©2010 American Physical Society