Proximity, Communities, and Attributes in Social Network Visualisation

H. Purchase, Nathan Stirling, D. Archambault
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Abstract

The identification of groups in social networks drawn as graphs is an important task for social scientists who wish to know how a population divides with respect to relationships or attributes. Community detection algorithms identify communities (groups) in social networks by finding clusters in the graph: that is, sets of people (nodes) where the relationships (edges) between them are more numerous than their relationships with other nodes. This approach to determining communities is naturally based on the underlying structure of the network, rather than on attributes associated with nodes. In this paper, we report on an experiment that (a) compares the effectiveness of several force-directed graph layout algorithms for visually identifying communities, and (b) investigates their usefulness when group membership is based not on structure, but on attributes associated with the people in the network. We find algorithms that clearly separate communities with large distances to be most effective, while using colour to represent community membership is more successful than reliance on structural layout.
社会网络可视化中的接近性、社区和属性
社会科学家希望了解人口在关系或属性方面是如何划分的,将社会网络中的群体以图表的形式进行识别是一项重要的任务。社区检测算法通过在图中寻找聚类来识别社交网络中的社区(群体):也就是说,一组人(节点)之间的关系(边)比他们与其他节点的关系要多。这种确定社区的方法自然是基于网络的底层结构,而不是基于与节点相关的属性。在本文中,我们报告了一项实验,该实验(a)比较了几种力导向图布局算法在视觉识别社区方面的有效性,以及(b)研究了当群体成员不是基于结构,而是基于与网络中人员相关的属性时它们的有用性。我们发现,清晰地将距离较远的社区分开的算法是最有效的,而使用颜色来表示社区成员比依赖结构布局更成功。
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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