网络社区发现的高效谱算法及其在生物和社会网络中的应用

Jianhua Ruan, Weixiong Zhang
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引用次数: 132

摘要

在复杂网络中自动发现社区结构是许多学科的基本任务,包括社会科学、工程和生物学。为了有效地评价社区结构的质量,提出了一种称为模块化(Q)的定量指标。基于q的优化,已经开发了几种社区发现算法。然而,这种优化问题是np困难的,现有算法精度低或计算成本高。在本文中,我们提出了一种用于模块化优化的高效谱算法。在大量的合成网络或真实网络上进行了测试,并与现有算法进行了比较,结果表明我们的方法是高效的,并且具有较高的准确率。此外,我们已经成功地将我们的算法应用于从不同领域的现实世界网络中检测有趣和有意义的社区结构,包括生物学,医学和社会科学。由于篇幅限制,这些应用程序的结果在我们的网站(http://cse .wustl.edu/ ~jruan/)上以完整的论文版本呈现。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
An Efficient Spectral Algorithm for Network Community Discovery and Its Applications to Biological and Social Networks
Automatic discovery of community structures in complex networks is a fundamental task in many disciplines, including social science, engineering, and biology. A quantitative measure called modularity (Q) has been proposed to effectively assess the quality of community structures. Several community discovery algorithms have since been developed based on the optimization of Q. However, this optimization problem is NP-hard, and the existing algorithms have a low accuracy or are computationally expensive. In this paper, we present an efficient spectral algorithm for modularity optimization. When tested on a large number of synthetic or real-world networks, and compared to the existing algorithms, our method is efficient and and has a high accuracy. In addition, we have successfully applied our algorithm to detect interesting and meaningful community structures from real-world networks in different domains, including biology, medicine and social science. Due to space limitation, results of these applications are presented in a complete version of the paper available on our Website (http://cse .wustl.edu/ ~jruan/).
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