On the performance of percolation graph matching

Lyudmila Yartseva, M. Grossglauser
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引用次数: 157

Abstract

Graph matching is a generalization of the classic graph isomorphism problem. By using only their structures a graph-matching algorithm finds a map between the vertex sets of two similar graphs. This has applications in the de-anonymization of social and information networks and, more generally, in the merging of structural data from different domains. One class of graph-matching algorithms starts with a known seed set of matched node pairs. Despite the success of these algorithms in practical applications, their performance has been observed to be very sensitive to the size of the seed set. The lack of a rigorous understanding of parameters and performance makes it difficult to design systems and predict their behavior. In this paper, we propose and analyze a very simple percolation - based graph matching algorithm that incrementally maps every pair of nodes (i,j) with at least r neighboring mapped pairs. The simplicity of this algorithm makes possible a rigorous analysis that relies on recent advances in bootstrap percolation theory for the G(n,p) random graph. We prove conditions on the model parameters in which percolation graph matching succeeds, and we establish a phase transition in the size of the seed set. We also confirm through experiments that the performance of percolation graph matching is surprisingly good, both for synthetic graphs and real social-network data.
论渗透图匹配的性能
图匹配是对经典图同构问题的推广。通过只使用它们的结构,图匹配算法找到两个相似图的顶点集之间的映射。这在社交和信息网络的去匿名化中有应用,更广泛地说,在合并来自不同领域的结构数据中也有应用。一类图匹配算法从已知的匹配节点对种子集开始。尽管这些算法在实际应用中取得了成功,但它们的性能对种子集的大小非常敏感。缺乏对参数和性能的严格理解使得设计系统和预测其行为变得困难。在本文中,我们提出并分析了一种非常简单的基于渗透的图匹配算法,该算法将每一对节点(i,j)增量映射到至少r个相邻映射对。该算法的简单性使得依赖于G(n,p)随机图的自举渗透理论的最新进展的严格分析成为可能。我们证明了模型参数匹配成功的条件,并建立了种子集大小的相变。我们还通过实验证实,无论是对于合成图还是真实的社交网络数据,渗透图匹配的性能都令人惊讶地好。
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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