arXiv Analytics

Sign in

arXiv:1508.02177 [cs.SI]AbstractReferencesReviewsResources

Local community extraction in directed networks

Xuemei Ning, Zhaoqi Liu, Shihua Zhang

Published 2015-08-10Version 1

Network is a simple but powerful representation of real-world complex systems. Network community analysis has become an invaluable tool to explore and reveal the internal organization of nodes. However, only a few methods were directly designed for community-detection in directed networks. In this article, we introduce the concept of local community structure in directed networks and provide a generic criterion to describe a local community with two properties. We further propose a stochastic optimization algorithm to rapidly detect a local community, which allows for uncovering the directional modular characteristics in directed networks. Numerical results show that the proposed method can resolve detailed local communities with directional information and provide more structural characteristics of directed networks than previous methods.

Related articles: Most relevant | Search more
arXiv:1606.08266 [cs.SI] (Published 2016-06-27)
Magnetic Eigenmaps for Visualization of Directed Networks
arXiv:1511.09368 [cs.SI] (Published 2015-11-30)
A neurodynamic framework for local community extraction in networks
arXiv:2312.03347 [cs.SI] (Published 2023-12-06)
Identifying hubs in directed networks