Emergent Mind

LabelRank: A Stabilized Label Propagation Algorithm for Community Detection in Networks

(1303.0868)
Published Mar 4, 2013 in cs.SI , cs.DS , and physics.soc-ph

Abstract

An important challenge in big data analysis nowadays is detection of cohesive groups in large-scale networks, including social networks, genetic networks, communication networks and so. In this paper, we propose LabelRank, an efficient algorithm detecting communities through label propagation. A set of operators is introduced to control and stabilize the propagation dynamics. These operations resolve the randomness issue in traditional label propagation algorithms (LPA), stabilizing the discovered communities in all runs of the same network. Tests on real-world networks demonstrate that LabelRank significantly improves the quality of detected communities compared to LPA, as well as other popular algorithms.

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