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关于图同构的凸松弛

On convex relaxation of graph isomorphism.

作者信息

Aflalo Yonathan, Bronstein Alexander, Kimmel Ron

机构信息

Department of Computer Science, Technion, Haifa 32000, Israel; and.

School of Electrical Engineering, Tel Aviv University, Ramat Aviv 69978, Israel

出版信息

Proc Natl Acad Sci U S A. 2015 Mar 10;112(10):2942-7. doi: 10.1073/pnas.1401651112. Epub 2015 Feb 23.

Abstract

We consider the problem of exact and inexact matching of weighted undirected graphs, in which a bijective correspondence is sought to minimize a quadratic weight disagreement. This computationally challenging problem is often relaxed as a convex quadratic program, in which the space of permutations is replaced by the space of doubly stochastic matrices. However, the applicability of such a relaxation is poorly understood. We define a broad class of friendly graphs characterized by an easily verifiable spectral property. We prove that for friendly graphs, the convex relaxation is guaranteed to find the exact isomorphism or certify its inexistence. This result is further extended to approximately isomorphic graphs, for which we develop an explicit bound on the amount of weight disagreement under which the relaxation is guaranteed to find the globally optimal approximate isomorphism. We also show that in many cases, the graph matching problem can be further harmlessly relaxed to a convex quadratic program with only n separable linear equality constraints, which is substantially more efficient than the standard relaxation involving n2 equality and n2 inequality constraints. Finally, we show that our results are still valid for unfriendly graphs if additional information in the form of seeds or attributes is allowed, with the latter satisfying an easy to verify spectral characteristic.

摘要

我们考虑加权无向图的精确匹配和不精确匹配问题,其中寻求一种双射对应关系,以使二次权重差异最小化。这个计算上具有挑战性的问题通常被松弛为一个凸二次规划问题,其中置换空间被双随机矩阵空间所取代。然而,这种松弛的适用性却鲜为人知。我们定义了一类广泛的友好图,其特征是具有易于验证的谱性质。我们证明,对于友好图,凸松弛保证能找到精确同构或证明其不存在。这一结果进一步扩展到近似同构图,为此我们给出了一个明确的权重差异量的界,在该界以下,松弛保证能找到全局最优近似同构。我们还表明,在许多情况下,图匹配问题可以进一步无害地松弛为一个仅具有(n)个可分离线性等式约束的凸二次规划问题,这比涉及(n^2)个等式和(n^2)个不等式约束的标准松弛要高效得多。最后,我们表明,如果允许以种子或属性的形式提供额外信息,并且后者满足易于验证的谱特征,那么我们的结果对于不友好图仍然有效。

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