什么时候两个未标记的网络可以在部分重叠下对齐?

Ehsan Kazemi, Lyudmila Yartseva, M. Grossglauser
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引用次数: 42

摘要

网络对齐是指两个未标记图的顶点集的匹配问题,可以看作是经典图同构问题的推广。网络对齐在许多领域都有应用,包括社会网络分析、隐私、模式识别、计算机视觉和计算生物学。在这些领域中已经提出了许多启发式算法。基于随机模型的网络对齐分析的最新进展揭示了网络参数与匹配度之间的相互作用。本文考虑两个网络仅部分重叠时的对齐问题,即一个网络中存在顶点,而另一个网络中没有对应的顶点。我们定义一个随机图模型,生成两个相关图G1,2;它由期望的节点重叠t2和期望的边重叠s2参数化。我们定义了特定对齐下结构不匹配的成本函数,并确定了完美匹配的阈值:如果G1,2的平均节点度增长为ω(s-2t-1 log(n)),则所提出的成本函数的最小化导致对齐:(i)完全超过G1和G2之间的共享节点集,并且(ii)与这些共享节点之间的真实匹配一致。我们的结果表明,网络对齐对部分边缘和节点重叠具有基本的鲁棒性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
When can two unlabeled networks be aligned under partial overlap?
Network alignment refers to the problem of matching the vertex sets of two unlabeled graphs, which can be viewed as a generalization of the classic graph isomorphism problem. Network alignment has applications in several fields, including social network analysis, privacy, pattern recognition, computer vision, and computational biology. A number of heuristic algorithms have been proposed in these fields. Recent progress in the analysis of network alignment over stochastic models sheds light on the interplay between network parameters and matchability. In this paper, we consider the alignment problem when the two networks overlap only partially, i.e., there exist vertices in one network that have no counterpart in the other. We define a random bigraph model that generates two correlated graphs G1,2; it is parameterized by the expected node overlap t2 and by the expected edge overlap s2. We define a cost function for structural mismatch under a particular alignment, and we identify a threshold for perfect matchability: if the average node degrees of G1,2 grow as ω(s-2t-1 log(n)), then minimization of the proposed cost function results in an alignment which (i) is over exactly the set of shared nodes between G1 and G2, and (ii) agrees with the true matching between these shared nodes. Our result shows that network alignment is fundamentally robust to partial edge and node overlaps.
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