Publication | Open Access
Constrained fractional set programs and their application in local clustering and community detection
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Citations
17
References
2013
Year
Mathematical ProgrammingCluster ComputingGraph SparsityEngineeringCommunity MiningNetwork AnalysisFractional Set ProgramsLocal ClusteringCommunity DiscoveryUnsupervised Machine LearningData ScienceData MiningPattern RecognitionDiscrete MathematicsCombinatorial OptimizationCommunity DetectionSocial Network AnalysisDocument ClusteringKnowledge DiscoveryComputer ScienceSpectral RelaxationsCommunity StructureNetwork ScienceGraph TheoryMinimization ProblemBusinessGraph AnalysisFuzzy Clustering
The (constrained) minimization of a ratio of set functions is a problem frequently occurring in clustering and community detection. As these optimization problems are typically NP-hard, one uses convex or spectral relaxations in practice. While these relaxations can be solved globally optimally, they are often too loose and thus lead to results far away from the optimum. In this paper we show that every constrained minimization problem of a ratio of non-negative set functions allows a tight relaxation into an unconstrained continuous optimization problem. This result leads to a flexible framework for solving constrained problems in network analysis. While a globally optimal solution for the resulting non-convex problem cannot be guaranteed, we outperform the loose convex or spectral relaxations by a large margin on constrained local clustering problems.
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