Correlating centralities of social networks

Neelaabh Gupta, Anagh Narain, Akshat Arora, Dolly Sharma
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引用次数: 2

Abstract

Centrality is an important measure to identify the most important actors in a network. This paper discusses the various Centrality Measures used in Social Network Analysis. These measures are tested on complex real-world social network data sets such as Video Sharing Networks, Social Interaction Network and Co-Authorship Networks to examine their effects on them. We carry out the correlation analysis of these centralities and plot the results to recommend when to use those centrality measures. Additionally, we introduce a new centrality measure — Cohesion Centrality based on the cohesiveness of a graph, develop its sequential algorithm and further devise a parallel algorithm to implement it.
社交网络的相关中心性
中心性是识别网络中最重要参与者的重要措施。本文讨论了社会网络分析中使用的各种中心性度量。这些措施在复杂的现实社会网络数据集上进行了测试,如视频共享网络、社会互动网络和合著网络,以检查它们对它们的影响。我们对这些中心性进行了相关分析,并绘制了结果,以推荐何时使用这些中心性度量。此外,基于图的内聚性,引入了一种新的中心性度量——内聚中心性,开发了其序列算法,并进一步设计了并行算法来实现它。
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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