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Interest Clustering Coefficient: A New Metric for Directed Networks Like Twitter

机译:兴趣聚类系数:像Twitter这样的针向网络的新度量

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We study here the clustering of directed social graphs. The clustering coefficient has been introduced to capture the social phenomena that a friend of a friend tends to be my friend. This metric has been widely studied and has shown to be of great interest to describe the characteristics of a social graph. In fact, the clustering coefficient is adapted for a graph in which the links are undirected, such as friendship links (Facebook) or professional links (LinkedIn). For a graph in which links are directed from a source of information to a consumer of information, it is no longer adequate. We show that former studies have missed much of the information contained in the directed part of such graphs. We thus introduce a new metric to measure the clustering of a directed social graph with interest links, namely the interest clustering coefficient. We compute it (exactly and using sampling methods) on a very large social graph, a Twitter snapshot with 505 million users and 23 billion links. We additionally provide the values of the formerly introduced directed and undirected metrics, a first on such a large snapshot. We exhibit that the interest clustering coefficient is larger than classic directed clustering coefficients introduced in the literature. This shows the relevancy of the metric to capture the informational aspects of directed graphs.
机译:我们在这里学习指导的社会图表的聚类。已经引入了聚类系数以捕捉到朋友的朋友往往是我的朋友的社会现象。这种指标已被广泛研究,并且已经表明描述了描述社会图的特征。实际上,聚类系数适用于其中链接的图形,例如友谊链接(Facebook)或专业链接(LinkedIn)。对于其中链接从信息源指向信息的指示的图表,它不再足够了。我们表明,前研究错过了这些图表的指导部分中包含的大部分信息。因此,我们引入了一种新的指标来测量带有兴趣链接的定向社交图的聚类,即利息群集系数。我们在一个非常大的社交图中计算它(准确并使用采样方法),这是一个拥有50500万用户和230亿链接的Twitter快照。我们还提供了以前引入的指示和无向度量的值,首先在这样的大快照上。我们展示了利息聚类系数大于文献中引入的经典定向聚类系数。这表明了指标捕获指向图形的信息方面的相关性。

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