图上随机行走平均命中次数的近线性时间算法

Zuobai Zhang, Wanyue Xu, Zhongzhi Zhang
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引用次数: 5

摘要

对于图上的随机行走,从平稳分布中选择的顶点i到目标顶点j的平均命中时间$H_j$可以作为顶点j重要性的度量,而Kemeny常数K是根据平稳分布随机选择的顶点i到目标顶点j的平均命中时间。这两种量都在不同的领域得到了广泛的应用。然而,它们的高计算复杂度限制了它们的应用,特别是对于具有数百万个顶点的大型网络。在本文中,我们首先建立了两个量之间的联系,对所有顶点用$H_j$表示K。然后,我们用图拉普拉斯伪逆的二次形式来表示这两个量,在此基础上,我们开发了一种有效的算法,该算法提供了所有顶点和K在近线性时间内关于边数的近似H_j$,具有高概率。在实际网络和模型网络上的大量实验结果验证了该算法的效率和准确性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Nearly Linear Time Algorithm for Mean Hitting Times of Random Walks on a Graph
For random walks on a graph, the mean hitting time $H_j$ from a vertex i chosen from the stationary distribution to the target vertex j can be used as a measure of importance for vertex j, while the Kemeny constant K is the mean hitting time from a vertex i to a vertex j selected randomly according to the stationary distribution. Both quantities have found a large variety of applications in different areas. However, their high computational complexity limits their applications, especially for large networks with millions of vertices. In this paper, we first establish a connection between the two quantities, representing K in terms of $H_j$ for all vertices. We then express both quantities in terms of quadratic forms of the pseudoinverse for graph Laplacian, based on which we develop an efficient algorithm that provides an approximation of $H_j$ for all vertices and K in nearly linear time with respect to the edge number, with high probability. Extensive experiment results on real-life and model networks validate both the efficiency and accuracy of the proposed algorithm.
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