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Comparing performance of graph matching algorithms on huge graphs

机译:比较图形匹配算法对大图的性能

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摘要

Graph matching algorithms are gaining more and more interest in the last years from different scientific communities; indeed, they allow comparing any kind of objects represented using their intrinsic structure, represented in terms of attributed relational graphs. The challenge is to make these algorithms able to provide solutions over huge graphs, with many thousands of nodes, and in a time that is adequate for practical applications; in this paper, we propose a comparison among the best performing algorithms available in the literature on a variety of very large graph databases used for performance assessment. The chosen datasets vary in terms of graph structure, size, density, presence of symmetric or repetitive substructures; this variability makes such datasets very challenging. The aim of this paper is to characterize the performance of the compared algorithms with respect to the typology, the size and other structural properties of the graphs; in this way, the user may consciously select the best suited algorithm for a given purpose. The results of an impressive experimentation that required 556 days of machine time are here presented and extensively discussed. (C) 2018 Elsevier B.V. All rights reserved.
机译:图表匹配算法在不同科学社区的过去几年中,越来越多的兴趣;实际上,它们允许比较使用其内在结构表示的任何类型的物体,以归属关系图表表示。挑战是使这些算法能够通过巨大的图表提供解决方案,其中数以千计的节点,并且在适用于实际应用的时间;在本文中,我们建议在文献中提供的最佳表演算法的比较,用于性能评估的各种非常大的图形数据库。所选择的数据集根据图形结构,尺寸,密度,对称或重复性子结构的存在而变化;这种变异性使得这种数据集非常具有挑战性。本文的目的是表征关于图形的类型,尺寸和其他结构特性的比较算法的性能;以这种方式,用户可以有意识地为给定目的选择最适合的算法。令人印象深刻的实验结果,在这里展示和广泛讨论了556天的机器时间。 (c)2018年elestvier b.v.保留所有权利。

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