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Discovering Community Structure on Large Networks Using a Grid Computing Environment

机译:使用网格计算环境在大型网络上发现社区结构

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摘要

Natural arising and evolution of community structures in natural and social networks has been explained as a result of topological relationships among nodes in the same network, and many studies in this field have revealed that it is possible to derive information about the community decomposition of a network just by examining its structure. The most used metric for this kind of analysis is the so-called "modularity" [12][11], which expresses the quality of a candidate community decomposition of a network. Despite its popularity, modularity is hard to be optimized [2] and algorithms for communities discovering based on modularity optimization are practically unfeasible for large networks. On the other hand, methods for community uncovering based on locally evaluated metric are very fast [7]. In this paper we propose the use of a parallel implementation of the local metric based method for community discovering proposed in [9] and the use of the overlapping modularity function [13] to evaluate the best partition. All measures reported in this paper are obtained running our implementation within a grid computing environment.
机译:由于同一网络中节点之间的拓扑关系,已经解释了自然和社会网络中社区结构的自然产生和演化,并且该领域的许多研究表明,有可能获得有关网络社区分解的信息。仅通过检查其结构即可。这种分析中最常用的度量是所谓的“模块化” [12] [11],它表示网络候选社区分解的质量。尽管它很流行,模块化还是很难被优化[2],而基于模块化优化的社区发现算法对于大型网络来说实际上是不可行的。另一方面,基于本地评估指标的社区发现方法非常快[7]。在本文中,我们建议使用并行执行的基于局部度量的方法来进行社区发现[9],并使用重叠的模块化函数[13]来评估最佳分区。本文中报告的所有措施都是在网格计算环境中运行我们的实现而获得的。

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  • 来源
    《Complex networks》|2009年|63-71|共9页
  • 会议地点 Catania(IT);Catania(IT)
  • 作者单位

    Dipartimento di Ingegneria Informatica e delle Telecomunicazioni, University of Catania, Italy;

    rnDipartimento di Ingegneria Informatica e delle Telecomunicazioni, University of Catania, Italy;

    rnDipartimento di Ingegneria Informatica e delle Telecomunicazioni, University of Catania, Italy;

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  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类 人工智能理论;
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