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Delusive PageRank in Incomplete Graphs

机译:不完整图中的妄想PageRank

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摘要

Most real-world graphs collected from the Web like Web graphs and social network graphs are incomplete. This leads to inaccurate estimates of graph properties based on link analysis such as PageRank. In this paper we focus on studying such deviations in ordering/ranking imposed by PageRank over incomplete graphs. We first show that deviations in rankings induced by PageRank are indeed possible. We measure how much a ranking, induced by PageRank, on an input graph could deviate from the original unseen graph. More importantly, we are interested in conceiving a measure that approximates the rank correlation among them without any knowledge of the original graph. To this extent we formulate the HAK measure that is based on computing the impact redistribution of PageRank according to the local graph structure. Finally, we perform extensive experiments on both real-world Web and social network graphs with more than 100M vertices and 10B edges as well as synthetic graphs to showcase the utility of HAK.
机译:从Web收集的大多数现实世界图(例如Web图和社交网络图)都是不完整的。这会导致基于链接分析(例如PageRank)的图形属性估算不准确。在本文中,我们重点研究PageRank对不完整图施加的排序/排名中的此类偏差。我们首先显示由PageRank引起的排名偏差确实是可能的。我们测量在输入图上由PageRank引起的排名可能会偏离原始的看不见的图。更重要的是,我们感兴趣的是在不了解原始图形的情况下构思一种近似其之间的等级相关性的度量。在此程度上,我们制定了基于本地图结构计算PageRank的影响重新分布的HAK度量。最后,我们对具有超过1亿个顶点和10B边的真实Web和社交网络图以及合成图进行了广泛的实验,以展示HAK的实用性。

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