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The strength of co-authorship ties through different topological properties

机译:通过不同的拓扑属性,共同作者关系的强度

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Abstract Social networks are complex structures that describe individuals (graph nodes) connected in any social context (graph edges). Different metrics can be applied to those networks and their properties in order to understand behavior and even predict the future. One of such properties is tie strength, which allows to identify prominent individuals, analyze how relationships play different roles, predict links, and so on. Here, we specifically address the problem of measuring tie strength in co-authorship social networks (nodes are researchers and edges represent their co-authored publications). We start by presenting four cases that emphasize the problems of current metrics. Then, we propose a new metric for tie strength, called tieness , that is simple to calculate and better differentiates the degrees of strength. Accompanied with a nominal scale, tieness also provides better results when compared to the existing metrics. Our analyses consider three real social networks built from publications collected from digital libraries on Computer Science, Medicine, and Physics. Finally, we also make all datasets publicly available.
机译:摘要社交网络是复杂的结构,用于描述在任何社交环境(图形边缘)中连接的个人(图形节点)。可以将不同的度量应用于这些网络及其属性,以了解行为,甚至预测未来。领带强度就是这种属性之一,它可以识别杰出的人物,分析关系如何扮演不同的角色,预测链接等等。在这里,我们专门解决在共同作者社交网络中衡量联系强度的问题(节点是研究人员,边代表其共同作者的出版物)。我们首先介绍四种强调当前指标问题的案例。然后,我们提出了一种新的领带强度度量,称为tieness,该度量易于计算并且可以更好地区分强度。与标称规模相结合,与现有指标相比,关联性还可以提供更好的结果。我们的分析考虑了三个实际的社交网络,这些社交网络是从计算机科学,医学和物理学数字图书馆收集的出版物中构建的。最后,我们还公开了所有数据集。

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