复杂网络聚类方法

Translated title of the contribution: Complex network clustering algorithms

杨博, 刘大有*, 刘际明, 金弟, 马海宾

*Corresponding author for this work

Research output: Contribution to journalJournal articlepeer-review

111 Citations (Scopus)

Abstract

网络簇结构是复杂网络最普遍和最重要的拓扑属性之一,具有同簇节点相互连接密集、异簇节点相互连接稀疏的特点。揭示网络簇结构的复杂网络聚类方法对分析复杂网络拓扑结构、理解其功能、发现其隐含模式、预测其行为都具有十分重要的理论意义,在社会网、生物网和万维网中具有广泛应用。综述了复杂网络聚类方法的研究背景、研究意义、国内外研究现状以及目前所面临的主要问题,试图为这个新兴的研究方向勾画出一个较为全面和清晰的概貌,为复杂网络分析、数据挖掘、智能Web、生物信息学等相关领域的研究者提供有益的参考。

Network community structure is one of the most fundamental and important topological properties of complex networks, within which the links between nodes are very dense, but between which they are quite sparse. Network clustering algorithms which aim to discover all natural network communities from given complex networks are fundamentally important for both theoretical researches and practical applications, and can be used to analyze the topological structures, understand the functions, recognize the hidden patterns, and predict the behaviors of complex networks including social networks, biological networks, World Wide Webs and so on. This paper reviews the background, the motivation, the state of arts as well as the main issues of existing works related to discovering network communities, and tries to draw a comprehensive and clear outline for this new and active research area. This work is hopefully beneficial to the researchers from the communities of complex network analysis, data mining, intelligent Web and bioinformatics.

Translated title of the contributionComplex network clustering algorithms
Original languageChinese (Simplified)
Pages (from-to)54-66
Number of pages13
Journal软件学报
Volume20
Issue number1
DOIs
Publication statusPublished - Jan 2009

Scopus Subject Areas

  • Software

User-Defined Keywords

  • 复杂网络
  • 网络聚类
  • 网络簇结构
  • Complex network
  • Network clustering
  • Network community structure

Fingerprint

Dive into the research topics of 'Complex network clustering algorithms'. Together they form a unique fingerprint.

Cite this