Publication | Open Access
Node-Based Resilience Measure Clustering with Applications to Noisy and Overlapping Communities in Complex Networks
12
Citations
46
References
2018
Year
Cluster ComputingEngineeringGraph FormCommunity MiningNetwork AnalysisNetwork RobustnessCommunity DiscoveryNetwork DynamicComputational Social ScienceData ScienceStatisticsCommunity DetectionSocial Network AnalysisComplex NetworksNode-based Resilience MeasureNode-based Resilience MeasuresComputer ScienceCommunity StructureNetwork ScienceGraph TheoryBusinessResilience MeasuresGraph AnalysisOverlapping Communities
This paper examines a schema for graph-theoretic clustering using node-based resilience measures. Node-based resilience measures optimize an objective based on a critical set of nodes whose removal causes some severity of disconnection in the network. Beyond presenting a general framework for the usage of node based resilience measures for variations of clustering problems, we experimentally validate the usefulness of such methods in accomplishing the following: (i) clustering a graph in one step without knowing the number of clusters a priori; (ii) removing noise from noisy data; and (iii) detecting overlapping communities. We demonstrate that this clustering schema can be applied successfully using a wide range of data, including both real and synthetic networks, both natively in graph form and also expressed as point sets.
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