Publication | Open Access
A Local Algorithm for Structure-Preserving Graph Cut
60
Citations
33
References
2017
Year
Unknown Venue
EngineeringInteraction NetworkNetwork AnalysisComputer-aided DesignLarge-scale Graph DataGraph ProcessingComputational Social ScienceData ScienceData MiningStar StructuresStructural Graph TheoryDiscrete MathematicsCombinatorial OptimizationComputational GeometrySocial Network AnalysisGeometric ModelingKnowledge DiscoveryLocal AlgorithmComputer ScienceNetwork TheoryGraph AlgorithmNetwork ScienceGraph TheoryMoney LaunderingBusinessGraph Analysis
Nowadays, large-scale graph data is being generated in a variety of real-world applications, from social networks to co-authorship networks, from protein-protein interaction networks to road traffic networks. Many existing works on graph mining focus on the vertices and edges, with the first-order Markov chain as the underlying model. They fail to explore the high-order network structures, which are of key importance in many high impact domains. For example, in bank customer personally identifiable information (PII) networks, the star structures often correspond to a set of synthetic identities; in financial transaction networks, the loop structures may indicate the existence of money laundering. In this paper, we focus on mining user-specified high-order network structures and aim to find a structure-rich subgraph which does not break many such structures by separating the subgraph from the rest.
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