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Robustness of Centrality Measures for Small-World Networks Containing Systematic Error

机译:含有系统误差的小世界网络中心措施的鲁棒性

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Social network analysis is a necessary aspect of learning terrorist/criminal networks, or of how people interact through social networking sites like Facebook and Twitter. The metrics used to evaluate these networks are equally as important, centrality measures being the most common. Being the most routinely used metrics, centrality measures have been tested under various conditions. However, there is a lacking focus on systematic error applied to computer generated connected undirected small-world networks. The goal of this paper is to test the centrality measures (betweenness, closeness, and degree) in such networks and test their robustness after the introduction of systematic error. The experiment found that the metrics performed poorly and their use would have to be determined based on the situation and consequences.
机译:社交网络分析是学习恐怖主义/刑事网络的必要方面,或者人们通过Facebook和Twitter等社交网站互动。用于评估这些网络的度量标准同样重要,中心度量是最常见的。作为最常用的指标,在​​各种条件下测试了中心措施。但是,缺乏对应用于计算机生成的连接无向小世界网络的系统错误的关注。本文的目标是在这种网络中测试各中心措施(之间,接近度和程度)并在引入系统误差后测试其稳健性。实验发现,必须基于情况和后果来确定差别和它们使用的指标。

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