Litcius/Paper detail

Bias-Adjusted Spectral Clustering in Multi-Layer Stochastic Block Models

Jing Lei, Kevin Lin

2022Journal of the American Statistical Association52 citationsDOIOpen Access PDF

Abstract

We consider the problem of estimating common community structures in multi-layer stochastic block models, where each single layer may not have sufficient signal strength to recover the full community structure. In order to efficiently aggregate signal across different layers, we argue that the sum-of-squared adjacency matrices contain sufficient signal even when individual layers are very sparse. Our method uses a bias-removal step that is necessary when the squared noise matrices may overwhelm the signal in the very sparse regime. The analysis of our method relies on several novel tail probability bounds for matrix linear combinations with matrix-valued coefficients and matrix-valued quadratic forms, which may be of independent interest. The performance of our method and the necessity of bias removal is demonstrated in synthetic data and in microarray analysis about gene co-expression networks.

Topics & Concepts

Cluster analysisStochastic block modelStatisticsSpectral clusteringMathematicsBlock (permutation group theory)Computer scienceLayer (electronics)EconometricsCombinatoricsMaterials scienceComposite materialAdvanced Clustering Algorithms ResearchComplex Network Analysis TechniquesBayesian Methods and Mixture Models
Bias-Adjusted Spectral Clustering in Multi-Layer Stochastic Block Models | Litcius