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From tree matching to sparse graph alignment

机译:从树匹配稀疏图形对齐

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In this paper we consider alignment of sparse graphs, for which we introduce the Neighborhood Tree Matching Algorithm (NTMA). For correlated Erd?s-R{é}nyi random graphs, we prove that the algorithm returns – in polynomial time – a positive fraction of correctly matched vertices, and a vanishing fraction of mismatches. This result holds with average degree of the graphs in $O(1)$ and correlation parameter $s$ that can be bounded away from $1$, conditions under which random graph alignment is particularly challenging. As a byproduct of the analysis we introduce a matching metric between trees and characterize it for several models of correlated random trees. These results may be of independent interest, yielding for instance efficient tests for determining whether two random trees are correlated or independent.
机译:在本文中,我们考虑对齐稀疏图的对齐,我们介绍了邻域树匹配算法(NTMA)。对于相关的ERD?S-R {é} NYI随机图,我们证明了算法返回 - 在多项式时间 - 正确匹配顶点的正分数,以及消失的不匹配分数。此结果具有在$ O(1)$和相关参数$ S $中的平均图形,可偏离1美元,随机图对齐尤为具有挑战性的条件。作为分析的副产品,我们在树之间引入匹配度量,并为几个相关的随机树进行了表征。这些结果可能具有独立的兴趣,屈服于确定两个随机树是否相关或独立的有效测试。

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