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Determining Factors Behind the PageRank Log-Log Plot

机译:PageRank对数-对数图背后的确定因素

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摘要

We study the relation between PageRank and other parameters of information networks such as in-degree, out-degree, and the fraction of dangling nodes. We model this relation through a stochastic equation inspired by the original definition of PageRank. Further, we use the theory of regular variation to prove that PageRank and in-degree follow power laws with the same exponent. The difference between these two power laws is in a multiplicative constant, which depends mainly on the fraction of dangling nodes, average in-degree, the power law exponent, and the damping factor. The out-degree distribution has a minor effect, which we explicitly quantify. Finally, we propose a ranking scheme which does not depend on out-degrees.
机译:我们研究了PageRank与信息网络的其他参数之间的关系,例如入度,出度和悬挂节点的比例。我们通过受PageRank原始定义启发的随机方程对这种关系进行建模。此外,我们使用正则变化理论来证明P​​ageRank和度数内的幂定律具有相同的指数。这两个幂律之间的差异在于一个乘法常数,该常数主要取决于悬挂节点的比例,平均度数,幂律指数和阻尼系数。学位程度分布的影响较小,我们将其明确量化。最后,我们提出一种不依赖学位的排名方案。

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