Discover Community Structure in Network by Optimization Algorithm Based on Modular Function

Xiaoling Guo, Y. Yang, Xinyu Song, Hongmiao Yao, Fudong Zhang
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Abstract

Analyzing the structure of complex networks accurately and efficiently has become one hot topic due to the large-scale network in recent academic research. The existing optimization methods for community mining are mostly based on the function Q proposed by Newman. In this paper we introduce two complex network clustering algorithm models FN and spectral clustering. They are both aimed to maximize the value of function Q, the differences are that FN uses overall information and spectral clustering uses spectral graph theory. Then finally we apply these algorithms to analyze Chinese aviation network and come to conclude that Chinese aviation network is mainly composed of East-West and North-South routes, with which we can arrange the community structure.
基于模块化函数的优化算法发现网络中的社区结构
由于网络的规模化,准确、高效地分析复杂网络的结构已成为近年来学术界研究的热点之一。现有的社区挖掘优化方法大多基于Newman提出的Q函数。本文介绍了两种复杂网络聚类算法模型FN和谱聚类。它们都是为了使函数Q的值最大化,不同的是FN使用整体信息,而谱聚类使用谱图理论。最后应用这些算法对中国航空网络进行分析,得出中国航空网络主要由东西航线和南北航线组成,可以据此安排社区结构。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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