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Highly-Accurate Community Detection via Pointwise Mutual Information-Incorporated Symmetric Non-Negative Matrix Factorization

Xin Luo, Zhigang Liu, Mingsheng Shang, Jungang Lou, MengChu Zhou

2020IEEE Transactions on Network Science and Engineering109 citationsDOI

Abstract

Community detection, aiming at determining correct affiliation of each node in a network, is a critical task of complex network analysis. Owing to its high efficiency, Symmetric and Non-negative Matrix Factorization (SNMF) is frequently adopted to handle this task. However, existing SNMF models mostly focus on a network's first-order topological information described by its adjacency matrix without considering the implicit associations among involved nodes. To address this issue, this study proposes a Pointwise mutual information-incorporated and Graph-regularized SNMF (PGS) model. It uses a) Pointwise Mutual Information to quantify implicit associations among nodes, thereby completing the missing but crucial information among critical nodes in a uniform way; b) graph-regularization to achieve precise representation of local topology, and c) SNMF to implement efficient community detection. Empirical studies on eight real-world social networks generated by industrial applications demonstrate that a PGS model achieves significantly higher accuracy gain in community detection than state-of-the-art community detectors.

Topics & Concepts

PointwiseNon-negative matrix factorizationAdjacency matrixPointwise mutual informationMatrix decompositionComputer scienceTheoretical computer scienceMathematicsTopology (electrical circuits)GraphMutual informationAlgorithmEigenvalues and eigenvectorsArtificial intelligenceCombinatoricsQuantum mechanicsPhysicsMathematical analysisComplex Network Analysis TechniquesAdvanced Graph Neural NetworksAdvanced Computing and Algorithms