Identifying network communities with a high resolution

Jianhua Ruan and Weixiong Zhang
Phys. Rev. E 77, 016104 – Published 14 January 2008

Abstract

Community structure is an important property of complex networks. The automatic discovery of such structure is a fundamental task in many disciplines, including sociology, biology, engineering, and computer science. Recently, several community discovery algorithms have been proposed based on the optimization of a modularity function (Q). However, the problem of modularity optimization is NP-hard and the existing approaches often suffer from a prohibitively long running time or poor quality. Furthermore, it has been recently pointed out that algorithms based on optimizing Q will have a resolution limit; i.e., communities below a certain scale may not be detected. In this research, we first propose an efficient heuristic algorithm QCUT, which combines spectral graph partitioning and local search to optimize Q. Using both synthetic and real networks, we show that QCUT can find higher modularities and is more scalable than the existing algorithms. Furthermore, using QCUT as an essential component, we propose a recursive algorithm HQCUT to solve the resolution limit problem. We show that HQCUT can successfully detect communities at a much finer scale or with a higher accuracy than the existing algorithms. We also discuss two possible reasons that can cause the resolution limit problem and provide a method to distinguish them. Finally, we apply QCUT and HQCUT to study a protein-protein interaction network and show that the combination of the two algorithms can reveal interesting biological results that may be otherwise undetected.

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  • Received 30 April 2007

DOI:https://doi.org/10.1103/PhysRevE.77.016104

©2008 American Physical Society

Authors & Affiliations

Jianhua Ruan1,* and Weixiong Zhang1,2,†

  • 1Department of Computer Science and Engineering, Washington University in St. Louis, St. Louis, Missouri 63130, USA
  • 2Department of Genetics, Washington University in St. Louis, St. Louis, Missouri 63130, USA

  • *Present address: Department of Computer Science, University of Texas at San Antonio, One UTSA Circle, San Antonio, TX 78249. jruan@cs.utsa.edu
  • zhang@cse.wustl.edu

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Vol. 77, Iss. 1 — January 2008

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