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Symmetric Nonnegative Matrix Factorization-Based Community Detection Models and Their Convergence Analysis

Xin Luo, Zhigang Liu, Long Jin, Yue Zhou, MengChu Zhou

2021IEEE Transactions on Neural Networks and Learning Systems149 citationsDOI

Abstract

Community detection is a popular yet thorny issue in social network analysis. A symmetric and nonnegative matrix factorization (SNMF) model based on a nonnegative multiplicative update (NMU) scheme is frequently adopted to address it. Current research mainly focuses on integrating additional information into it without considering the effects of a learning scheme. This study aims to implement highly accurate community detectors via the connections between an SNMF-based community detector's detection accuracy and an NMU scheme's scaling factor. The main idea is to adjust such scaling factor via a linear or nonlinear strategy, thereby innovatively implementing several scaling-factor-adjusted NMU schemes. They are applied to SNMF and graph-regularized SNMF models to achieve four novel SNMF-based community detectors. Theoretical studies indicate that with the proposed schemes and proper hyperparameter settings, each model can: 1) keep its loss function nonincreasing during its training process and 2) converge to a stationary point. Empirical studies on eight social networks show that they achieve significant accuracy gain in community detection over the state-of-the-art community detectors.

Topics & Concepts

Non-negative matrix factorizationHyperparameterStationary pointMultiplicative functionComputer scienceMatrix decompositionConvergence (economics)DetectorMathematicsScalingNonlinear systemArtificial intelligenceMachine learningMathematical optimizationGeometryQuantum mechanicsEigenvalues and eigenvectorsEconomic growthMathematical analysisPhysicsTelecommunicationsEconomicsComplex Network Analysis TechniquesText and Document Classification TechnologiesOpinion Dynamics and Social Influence