On Random Walks and Random Sampling to Find Max Degree Nodes in Assortative Erdos Renyi Graphs

Jonathan Stokes, S. Weber
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引用次数: 5

Abstract

Social networks are naturally modeled as graphs, with edges indicating associations of users, and as such user popularity or influence is captured by the degree of the node corresponding to the user. It is of natural interest to seek maximum degree nodes, i.e., most popular members, in this graph, and as these networks are large, this requires an efficient search algorithm. In this paper we address the problem of finding a maximum degree node (as distinct from finding the maximum degree) in Erdos Renyi (ER) random graphs, where these graphs are ``rewired'' in a way to reach a target assortativity without affecting the marginal degree distribution. We address two questions: i) how many maximum degree nodes are in such a graph, on average, and ii) is it easier to find such a node via a biased random walk (BRW) or via random (star) sampling (RSS)? To answer the first question, we show that large ER graphs possess on average a unique maximum degree node. The answer to the second question is that the superiority of BRW vs. RSS depends critically on the assortativity. In particular, RSS is independent of, and BRW is highly sensitive to, the assortativity. We demonstrate numerically the sensitivity of BRW to assortativity is connected to the prevalence of local maxima; these maxima limit the ability of BRW to follow a gradient on the graph. Finally, we establish how the prevalence of local maxima may be computed from the joint degree distribution of the graph.
分类Erdos Renyi图中寻找最大度节点的随机漫步和随机抽样
社交网络自然地被建模为图形,边缘表示用户的关联,因此用户的受欢迎程度或影响力是由用户对应的节点的程度来捕获的。在这个图中寻找最大度节点,即最受欢迎的成员是很自然的,由于这些网络很大,这需要一个有效的搜索算法。在本文中,我们解决了在Erdos Renyi (ER)随机图中寻找最大度节点(与寻找最大度不同)的问题,其中这些图被“重新连接”,以在不影响边际度分布的情况下达到目标分类。我们解决了两个问题:i)这样一个图中平均有多少个最大度节点,ii)通过有偏随机漫步(BRW)或随机(星形)抽样(RSS)更容易找到这样一个节点?为了回答第一个问题,我们证明了大ER图平均具有唯一的最大度节点。第二个问题的答案是,BRW与RSS的优势主要取决于分类性。特别是,RSS独立于分类性,而BRW对分类性高度敏感。我们在数值上证明了BRW对分类的敏感性与局部最大值的普遍性有关;这些最大值限制了BRW在图上跟随梯度的能力。最后,我们建立了如何从图的联合度分布计算局部最大值的流行度。
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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