The Power of Random Neighbors in Social Networks

Silvio Lattanzi, Yaron Singer
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引用次数: 30

Abstract

The friendship paradox is a sociological phenomenon first discovered by Feld which states that individuals are likely to have fewer friends than their friends do, on average. This phenomenon has become common knowledge, has several interesting applications, and has also been observed in various data sets. In his seminal paper Feld provides an intuitive explanation by showing that in any graph the average degree of edges in the graph is an upper bound on the average degree of nodes. Despite the appeal of this argument, it does not prove the existence of the friendship paradox. In fact, it is easy to construct networks -- even with power law degree distributions -- where the ratio between the average degree of neighbors and the average degree of nodes is high, but all nodes have the exact same degree as their neighbors. Which models, then, explain the friendship paradox? In this paper we give a strong characterization that provides a formal understanding of the friendship paradox. We show that for any power law graph with exponential parameter in (1,3), when every edge is rewired with constant probability, the friendship paradox holds, i.e. there is an asymptotic gap between the average degree of the sample of polylogarithmic size and the average degree of a random set of its neighbors of equal size. To examine this characterization on real data, we performed several experiments on social network data sets that complement our theoretical analysis. We also discuss the applications of our result to influence maximization.
随机邻居在社交网络中的作用
“友谊悖论”是由菲尔德首先发现的一种社会学现象,该现象指出,平均而言,个人的朋友可能比他们的朋友少。这种现象已经成为常识,有几个有趣的应用,也在各种数据集中被观察到。在他的开创性论文中,菲尔德提供了一个直观的解释,表明在任何图中,图中边的平均度是节点平均度的上界。尽管这个论点很有吸引力,但它并不能证明友谊悖论的存在。事实上,构建网络很容易——即使是幂律度分布——其中邻居的平均度与节点的平均度之间的比率很高,但所有节点的度都与邻居完全相同。那么,哪些模型可以解释友谊悖论呢?在本文中,我们给出了一个强有力的特征,为友谊悖论提供了一个正式的理解。我们证明了对于任何指数参数为(1,3)的幂律图,当每条边都以恒定的概率重新布线时,友谊悖论成立,即多对数大小的样本的平均度与其随机大小相等的邻居集的平均度之间存在渐近差距。为了在真实数据上检验这种特征,我们在社交网络数据集上进行了几个实验,以补充我们的理论分析。我们还讨论了我们的结果在影响最大化中的应用。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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