Community detection in multi-layer networks by regularized debiased spectral clustering

Huan Qing
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Abstract

Community detection is a crucial problem in the analysis of multi-layer networks. In this work, we introduce a new method, called regularized debiased sum of squared adjacency matrices (RDSoS), to detect latent communities in multi-layer networks. RDSoS is developed based on a novel regularized Laplacian matrix that regularizes the debiased sum of squared adjacency matrices. In contrast, the classical regularized Laplacian matrix typically regularizes the adjacency matrix of a single-layer network. Therefore, at a high level, our regularized Laplacian matrix extends the classical regularized Laplacian matrix to multi-layer networks. We establish the consistency property of RDSoS under the multi-layer stochastic block model (MLSBM) and further extend RDSoS and its theoretical results to the degree-corrected version of the MLSBM model. The effectiveness of the proposed methods is evaluated and demonstrated through synthetic and real datasets.
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通过正则化去偏谱聚类检测多层网络中的群落
社群检测是多层网络分析中的一个关键问题。在这项工作中,我们引入了一种名为正则化邻接矩阵平方和(RDSoS)的新方法,用于检测多层网络中的潜在群落。RDSoS 是基于一种新颖的正则化拉普拉斯矩阵开发的,该矩阵对邻接矩阵平方的去偏和进行了正则化处理。与此相反,经典的正则化拉普拉斯矩阵通常正则化单层网络的邻接矩阵。因此,在高层次上,我们的正则化拉普拉斯矩阵将经典正则化拉普拉斯矩阵扩展到了多层网络。我们建立了 RDSoS 在多层随机块模型(MLSBM)下的一致性属性,并进一步将 RDSoS 及其理论结果扩展到多层随机块模型的度校正版本。通过合成数据集和真实数据集评估和证明了所提方法的有效性。
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