Efficient Community Detection in Large Scale Networks

Vinicius da F Vieira, C. R. Xavier, Alexandre Evsukoff
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引用次数: 1

Abstract

One of the most important features of a network is its division into communities, groups of nodes with many internal and few external connections. Furthermore, the community structure of a network can be organized hierarchically, which reflects a natural behavior of real life phenomena. It is a difficult task to detect and understand the community structure of a network and it becomes even more challenging as data availability (and networks sizes) increases. This work presents a efficient implementation for community detection in networks aiming on modularity maximization based on the Newman's spectral method with a fine tuning(FT) stage. This work presents a modification on the FT which substantially reduces the execution time, while preserving the division quality. A high performance implementation of the method enables their application to large real world networks. The Newman's spectral method can be applied to networks with more than 1 million nodes in a personal computer.
大规模网络中的高效社群检测
网络最重要的特征之一是它被划分为社区,即具有许多内部连接和很少外部连接的节点组。此外,网络的社区结构可以分层组织,这反映了现实生活现象的自然行为。检测和理解网络的社区结构是一项困难的任务,随着数据可用性(和网络规模)的增加,这项任务变得更加具有挑战性。本研究提出了一种基于微调(FT)阶段的纽曼谱方法,针对模块化最大化的网络社区检测的有效实现。这项工作提出了一种改进的FT,大大减少了执行时间,同时保持了分割质量。该方法的高性能实现使其能够应用于大型现实世界的网络。纽曼谱方法可以应用于个人计算机中超过100万个节点的网络。
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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