基于随机漫步的网络属性快速低成本估计

Q3 Mathematics Internet Mathematics Pub Date : 2013-12-14 DOI:10.1080/15427951.2016.1164100
C. Cooper, T. Radzik, Yiannis Siantos
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引用次数: 16

摘要

摘要研究了随机游走作为估计大连通无向图全局性质的一种有效方法。我们感兴趣的属性的典型示例包括边、顶点和三角形的数量,以及更一般的小固定子图的数量。我们考虑了两种基于随机行走的首次返回的方法:(1)再生过程的循环公式和(2)由所研究的性质定义边权的加权随机行走。我们回顾了这些方法的理论基础,并指出它们如何适用于大型在线网络的一般非侵入性调查。随机漫步第一次返回时间的期望值和方差随着顶点权重的增加而减小,因此对于给定的时间预算,返回高权重顶点应该给出最好的属性估计。我们提出的理论和实验结果的收敛速度估计作为一个函数的随机数漫步的返回到一个给定的开始顶点。我们做了一些实验来估计两个测试图的顶点、边和三角形的数量。
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Fast Low-Cost Estimation of Network Properties Using Random Walks
Abstract We study the use of random walks as an efficient method to estimate global properties of large connected undirected graphs. Typical examples of the properties of interest include the number of edges, vertices, and triangles, and more generally, the number of small fixed subgraphs. We consider two methods based on first returns of random walks: (1) the cycle formula of regenerative processes and (2) weighted random walks with edge weights defined by the property under investigation. We review the theoretical foundations for these methods and indicate how they can be adapted for the general nonintrusive investigation of large online networks. The expected value and variance of the time of the first return of a random walk decrease with increasing vertex weight, so for a given time budget, returns to high-weight vertices should give the best property estimates. We present theoretical and experimental results on the rate of convergence of the estimates as a function of the number of returns of a random walk to a given start vertex. We made experiments to estimate the number of vertices, edges, and triangles for two test graphs.
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Internet Mathematics
Internet Mathematics Mathematics-Applied Mathematics
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