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Approximate Graph Edit Distance by Several Local Searches in Parallel

机译:近似图表编辑几个本地搜索的距离并行

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Solving or approximating the linear sum assignment problem (LSAP) is an important step of several constructive and local search strategies developed to approximate the graph edit distance (GED) of two attributed graphs, or more generally the solution to quadratic assignment problems. Constructive strategies find a first estimation of the GED by solving an LSAP. This estimation is then refined by a local search strategy. While these search strategies depend strongly on the initial assignment, several solutions to the linear problem usually exist. They are not taken into account to get better estimations. All the estimations of the GED based on an LSAP select randomly one solution. This paper explores the insights provided by the use of several solutions to an LSAP, refined in parallel by a local search strategy based on the relaxation of the search space, and conditional gradient descent. Other generators of initial assignments are also considered, approximate solutions to an LSAP and random assignments. Experimental evaluations on several datasets show that the proposed estimation is comparable to more global search strategies in a reduced computational time.
机译:求解或近似线性和分配问题(LSAP)是开发的若干建设性和本地搜索策略的重要步骤,该策略为近似于两个归属图的图形编辑距离(GED),或者更通常是二次分配问题的解决方案。建设性策略通过解决LSAP来找到GED的首次估计。然后通过本地搜索策略改进该估计。虽然这些搜索策略强烈依赖于初始分配,但通常存在对线性问题的几个解决方案。他们没有考虑到获得更好的估计。基于LSAP的GED的所有估计选择随机选择一个解决方案。本文探讨了使用几种解决方案提供给LSAP的洞察,该方法由本地搜索策略并行地基于搜索空间的放松,以及条件梯度下降。还考虑其他初始分配的发电机,对LSAP和随机分配的近似解。关于若干数据集的实验评估表明,建议的估计与降低的计算时间中的更多全球搜索策略相当。

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