4th International ICST Conference on Performance Evaluation Methodologies and Tools

Research Article

Community detection algorithms: a comparative analysis: invited presentation, extended abstract

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  • @INPROCEEDINGS{10.4108/ICST.VALUETOOLS2009.8046,
        author={Santo  Fortunato and Andrea  Lancichinetti},
        title={Community detection algorithms: a comparative analysis: invited presentation, extended abstract},
        proceedings={4th International ICST Conference on Performance Evaluation Methodologies and Tools},
        publisher={ICST},
        proceedings_a={VALUETOOLS},
        year={2010},
        month={5},
        keywords={Networks community structure},
        doi={10.4108/ICST.VALUETOOLS2009.8046}
    }
    
  • Santo Fortunato
    Andrea Lancichinetti
    Year: 2010
    Community detection algorithms: a comparative analysis: invited presentation, extended abstract
    VALUETOOLS
    ICST
    DOI: 10.4108/ICST.VALUETOOLS2009.8046
Santo Fortunato1,*, Andrea Lancichinetti1,*
  • 1: Complex Systems and Networks, ISI Foundation, Viale S. Severo 65, 10133, Torino, Italy
*Contact email: fortunato@isi.it, arg.lanci@gmail.com

Abstract

Uncovering the community structure exhibited by real networks is a crucial step towards an understanding of complex systems that goes beyond the local organization of their constituents. Many algorithms have been proposed so far, but none of them has been subjected to strict tests to evaluate their performance. Most of the sporadic tests performed so far involved small networks with known community structure and/or artificial graphs with a simplified structure, which is very uncommon in real systems. Here we test several methods against a recently introduced class of benchmark graphs, with heterogeneous distributions of degree and community size. The methods are also tested against the benchmark by Girvan and Newman and on random graphs. As a result of our analysis, three recent algorithms introduced by Rosvall and Bergstrom, Blondel et al. and Ronhovde and Nussinov, respectively, have an excellent performance, with the additional advantage of low computational complexity, which enables one to analyze large systems.