群落进化发现的中心性测度比较

Javad RafieeFard, B. Teimourpour, Mohammadreza Shaghouzi, Maryam Jami
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引用次数: 0

摘要

许多现实世界的社交网络,随着时间的推移呈现出结构变化,因此它们可以被建模为动态图形。然而,大多数社会网络分析方法,包括社区检测,都集中在静态网络上执行。因此,研究群落进化的方法仍有改进的空间。本文研究了独立社区检测和匹配方法中引入的一种方法。这是一种跟踪动态群落演变的方法,但它的优点是使用了已经详细研究过的静态网络方法。以前的研究已经检查和比较了一些可以在这种方法中使用的中心性。在本研究中,我们通过使用其他中心性,即中间中心性和亲密中心性来检验其表现,并将它们与社会地位的使用进行比较。我们的分析是在一个词共现网络的子图上进行的,这是一种文献计量网络,算法的结果由专家进行了评估。结果表明,中间性中心性代表了更透明和有用的事件,建议在小型网络中使用它来发现社区进化。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A Comparison of Centrality Measures for Community Evolution Discovery
Many of real-world social networks, show structural changes over time, so they can be modeled as dynamic graphs. However, most methods in social network analysis, including community detection, are focused on performing on static networks. Therefore, methods of studying community evolution still have room for improvement. In this article, we investigated one of the methods introduced in independent community detection and matching approach. It is an approach for tracking dynamic community evolution, but it has the advantage of using methods that have been studied in detail for static networks. Previous studies have examined and compared some of the centralities that can be used in this method. In this study, we examined its performance by using other centralities called betweenness centrality and closeness centrality, and compared them with the usage of social position. Our analysis was performed on a subgraph of the word co-occurrence network, which is a type of bibliometric network, and the results of the algorithm were evaluated by experts. The results show that betweenness centrality represents more transparent and useful events and using it in community evolution discovery is recommended for small networks.
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