Abstract

Community detection in network analysis aims at partitioning nodes into disjoint communities. Real networks often contain outlier nodes that do not belong to any communities and often do not have a known number of communities. However, most current algorithms assume that the number of communities is known and even fewer algorithm can handle networks with outliers. In this paper, we propose detecting communities by maximizing a novel model free tightness criterion. We show that this tightness criterion is closely related with the $L_{0}$-penalized graph Laplacian and develop an efficient algorithm to extract communities based on the criterion. Unlike many other community detection methods, this method does not assume the number of communities is known and can properly detect communities in networks with outliers. Under the degree corrected stochastic block model, we show that even for networks with outliers, maximizing the tightness criterion can extract communities with small misclassification rates when the number of communities grows to infinity as the network size grows. Simulation and real data analysis also show that the proposed method performs significantly better than existing methods.

Highlights

  • Community detection has attracted tremendous research attention, initially in the physics and computer science community (Newman, 2004a; Newman and Girvan, 2004; Newman, 2006) and more recently in the statistics community (Bickel and Chen, 2009; Bickel et al., 2013; Zhao et al, 2012; Jin, 2015)

  • Consistency results were developed for a number of community detection algorithms, mostly based on the stochastic block model (SBM) or degree corrected stochastic block model (DCSBM)

  • Under the assumption that the community number is fixed, Bickel and Chen (Bickel and Chen, 2009) laid out a general theory under the SBM for checking consistency of community detection criteria when the network size grows to infinity, and similar theories were developed for DCSBM (Zhao et al, 2012; Jin, 2015)

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Summary

Introduction

Community detection has attracted tremendous research attention, initially in the physics and computer science community (Newman, 2004a; Newman and Girvan, 2004; Newman, 2006) and more recently in the statistics community (Bickel and Chen, 2009; Bickel et al., 2013; Zhao et al, 2012; Jin, 2015). Consistency results were developed for a number of community detection algorithms, mostly based on the SBM or DCSBM. Under the assumption that the community number is fixed, Bickel and Chen (Bickel and Chen, 2009) laid out a general theory under the SBM for checking consistency of community detection criteria when the network size grows to infinity, and similar theories were developed for DCSBM (Zhao et al, 2012; Jin, 2015). As far as we know, similar results for the DCSBM are not available yet Despite all these progresses in community detection, most of the current algorithms assume that the number of communities K is known in priori.

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