Community detection in graphs through correlation

Lian Duan, W. Street, Yanchi Liu, Haibing Lu
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引用次数: 61

Abstract

Community detection is an important task for social networks, which helps us understand the functional modules on the whole network. Among different community detection methods based on graph structures, modularity-based methods are very popular recently, but suffer a well-known resolution limit problem. This paper connects modularity-based methods with correlation analysis by subtly reformatting their math formulas and investigates how to fully make use of correlation analysis to change the objective function of modularity-based methods, which provides a more natural and effective way to solve the resolution limit problem. In addition, a novel theoretical analysis on the upper bound of different objective functions helps us understand their bias to different community sizes, and experiments are conducted on both real life and simulated data to validate our findings.
通过相关性在图中进行社区检测
社区检测是社交网络的一项重要任务,它帮助我们了解整个网络的功能模块。在各种基于图结构的社区检测方法中,基于模块化的社区检测方法是近年来非常流行的一种方法,但存在一个众所周知的分辨率限制问题。本文通过对基于模块化的方法和相关分析方法的数学公式进行巧妙的重新格式化,将两者联系起来,探讨如何充分利用相关分析改变基于模块化方法的目标函数,从而为解决分辨率极限问题提供一种更自然、更有效的方法。此外,对不同目标函数的上界进行了新颖的理论分析,帮助我们理解它们对不同社区规模的偏差,并在现实生活和模拟数据上进行了实验来验证我们的发现。
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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