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Finding High-Degree Vertices with Inclusive Random Sampling

机译:找到具有包容式随机抽样的高度顶点

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The friendship paradox (FP) is the famous phenomenon that one's friends typically have more friends than they themselves do. The FP has inspired novel approaches for sampling vertices at random from a network when the goal of the sampling is to find vertices of higher degree. The most famous of these methods involves selecting a vertex at random and then selecting one of its neighbors at random. Another possible method would be to select a random edge from the network and then select one of its endpoints at random, again predicated on the fact that high degree vertices will be overrepresented in the collection of edge endpoints. In this paper we propose a simple tweak to these methods where we consider the degrees of the two vertices involved in the selection process and choose the one with higher degree. We explore the different sampling methods theoretically and establish interesting asymptotic bounds on their performances as a way of highlighting their respective strengths. We also apply the methods experimentally to both synthetic graphs and real-world networks to determine the improvement inclusive sampling offers over exclusive sampling, which version of inclusive sampling is stronger, and what graph characteristics affect these results.
机译:友谊悖论(FP)是一个着名的现象,即一个人的朋友通常拥有比他们自己更多的朋友。当采样的目标是找到更高程度的顶点时,FP在从网络中随机抽样的新方法启发了用于采样顶点的新方法。最着名的这些方法涉及随意选择顶点,然后随机选择一个邻居。另一种可能的方法是从网络中选择随机边缘,然后随机选择其一个端点,再次追溯到高度顶点在边缘端点的集合中超越的事实。在本文中,我们向这些方法提出了一个简单的调整,我们考虑了选择过程中涉及的两个顶点的程度,并选择具有更高程度的顶点。我们从理论上探讨了不同的抽样方法,并在其表演中建立有趣的渐近界,作为突出各自的优势的方式。我们还通过实验将该方法应用于合成图和现实世界网络,以确定完善的包容性采样提供的超级采样提供,该版本的包容性采样更强大,图表特征会影响这些结果。

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