Luo Xin, Liu Zhigang, Jin Long, Zhou Yue, Zhou Mengchu
IEEE Trans Neural Netw Learn Syst. 2022 Mar;33(3):1203-1215. doi: 10.1109/TNNLS.2020.3041360. Epub 2022 Feb 28.
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.
社区检测是社交网络分析中一个既热门又棘手的问题。基于非负乘法更新(NMU)方案的对称非负矩阵分解(SNMF)模型常被用于解决该问题。当前研究主要集中在将额外信息整合到其中,而未考虑学习方案的影响。本研究旨在通过基于SNMF的社区检测器的检测精度与NMU方案的缩放因子之间的联系,实现高精度的社区检测器。主要思路是通过线性或非线性策略调整该缩放因子,从而创新性地实现几种缩放因子调整后的NMU方案。将它们应用于SNMF和图正则化SNMF模型,以实现四种基于SNMF的新型社区检测器。理论研究表明,通过所提出的方案和适当的超参数设置,每个模型都可以:1)在训练过程中使其损失函数不增加,2)收敛到一个驻点。对八个社交网络的实证研究表明,它们在社区检测方面比现有最先进的社区检测器有显著的精度提升。