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Nonnegative Orthogonal Graph Matching

机译:非负正交图匹配

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Graph matching problem that incorporates pair-wise constraints can be formulated as Quadratic Assignment Problem (QAP). The optimal solution of QAP is discrete and combinational, which makes QAP problem NP-hard. Thus, many algorithms have been proposed to find approximate solutions. In this paper, we propose a new algorithm, called Nonnegative Orthogonal Graph Matching (NOGM), for QAP matching problem. NOGM is motivated by our new observation that the discrete mapping constraint of QAP can be equivalently encoded by a nonnegative orthogonal constraint which is much easier to implement computationally. Based on this observation, we develop an effective multiplicative update algorithm to solve NOGM and thus can find an effective approximate solution for QAP problem. Comparing with many traditional continuous methods which usually obtain continuous solutions and should be further discretized, NOGM can obtain a sparse solution and thus incorporates the desirable discrete constraint naturally in its optimization. Promising experimental results demonstrate benefits of NOGM algorithm.
机译:图表匹配包含成对约束的问题可以将其标志为二次分配问题(QAP)。 QAP的最佳解决方案是离散和组合,这使得QAP问题是NP-HARD。因此,已经提出了许多算法来查找近似解决方案。在本文中,我们提出了一种新的算法,称为非负正交图匹配(NOGM),用于QAP匹配问题。 Nogm是通过我们的新观察,即QAP的离散映射约束可以通过非负正交约束等效地编码,这更容易计算地实现。基于该观察,我们开发了一种有效的乘法更新算法来解决NOGM,因此可以找到QAP问题的有效近似解。与通常获得连续溶液的许多传统连续方法的比较,并且应该进一步离散化,NogM可以获得稀疏溶液,因此在其优化中自然地结合了所需的离散约束。有希望的实验结果表明NogM算法的益处。

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