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Estimating Mixed-Memberships Using the Symmetric Laplacian Inverse Matrix

Authors :
Qing, Huan
Wang, Jingli
Source :
Journal of the Korean Statistical Society. 2023 Mar;52(1):248-64
Publication Year :
2020

Abstract

Mixed membership community detection is a challenging problem. In this paper, to detect mixed memberships, we propose a new method Mixed-SLIM which is a spectral clustering method on the symmetrized Laplacian inverse matrix under the degree-corrected mixed membership model. We provide theoretical bounds for the estimation error on the proposed algorithm and its regularized version under mild conditions. Meanwhile, we provide some extensions of the proposed method to deal with large networks in practice. These Mixed-SLIM methods outperform state-of-art methods in simulations and substantial empirical datasets for both community detection and mixed membership community detection problems.

Details

Database :
arXiv
Journal :
Journal of the Korean Statistical Society. 2023 Mar;52(1):248-64
Publication Type :
Report
Accession number :
edsarx.2012.09561
Document Type :
Working Paper