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

TL;DR
This paper introduces RDSoS, a novel regularized spectral clustering method for multi-layer networks, with theoretical guarantees and improved community detection performance over existing techniques.
Contribution
The paper develops RDSoS, extending regularized spectral clustering to multi-layer networks, and provides theoretical consistency results under the MLSBM model.
Findings
RDSoS outperforms state-of-the-art methods in experiments.
The method is insensitive to regularizer selection.
SoS-modularity improves community quality assessment.
Abstract
Community detection is a crucial problem in the analysis of multi-layer networks. While regularized spectral clustering methods using the classical regularized Laplacian matrix have shown great potential in handling sparse single-layer networks, to our knowledge, their potential in multi-layer network community detection remains unexplored. To address this gap, in this work, we introduce a new method, called regularized debiased sum of squared adjacency matrices (RDSoS), to detect 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 one to multi layer networks. We…
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Taxonomy
TopicsComplex Network Analysis Techniques · Network Security and Intrusion Detection · Anomaly Detection Techniques and Applications
