Publication | Open Access
Seeding the Kernels in graphs: toward multi-resolution community analysis
38
Citations
26
References
2009
Year
Cluster ComputingEngineeringCommunity Detection SufferCommunity MiningNetwork AnalysisCommunity DiscoveryComputational Social ScienceData ScienceMulti-resolution Community DetectionStatisticsCommunity DetectionSocial Network AnalysisKnowledge DiscoveryComputer ScienceCommunity StructureNetwork ScienceGraph TheoryMulti-resolution Community AnalysisBusinessGraph AnalysisLarge-scale Network
Current endeavors in community detection suffer from the resolution limit problem and can be quite expensive for large networks, especially those based on optimization schemes. We propose a conceptually different approach for multi-resolution community detection, by introducing the kernels from statistical literature into the graph, which mimic the node interaction that decays locally with the geodesic distance. The modular structure naturally arises as the patterns inherent in the interaction landscape, which can be easily identified by the hill climbing process. The range of node interaction, and henceforth the resolution of community detection, is controlled via tuning the kernel bandwidth in a systematic way. Our approach is computationally efficient and its effectiveness is demonstrated using both synthetic and real networks with multiscale structures.
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