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Characterization of Tail Dependence for In-Degree and PageRank

机译:In-Degree和PageRank的尾部依赖关系的表征

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摘要

The dependencies between power law parameters such as in-degree and PageRank, can be characterized by the so-called angular measure, a notion used in extreme value theory to describe the dependency between very large values of coordinates of a random vector. Basing on an analytical stochastic model, we argue that the angular measure for in-degree and personalized PageRank is concentrated in two points. This corresponds to the two main factors for high ranking: large in-degree and a high rank of one of the ancestors. Furthermore, we can formally establish the relative importance of these two factors.
机译:幂律参数(例如,度数和PageRank)之间的依赖性可以通过所谓的角度度量来表征,这是一种用于极值理论的概念,用于描述随机矢量坐标的非常大的值之间的依赖性。基于分析随机模型,我们认为度内和个性化PageRank的角度度量集中在两个点上。这与获得高等级的两个主要因素相对应:度高和祖先之一的高等级。此外,我们可以正式确定这两个因素的相对重要性。

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