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Scalable Graph Isomorphism: Combining Pairwise Color Refinement and Backtracking via Compressed Candidate Space

机译:可伸缩图同构:通过压缩候选空间结合成对彩色细化和回溯

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Graph isomorphism is a core problem in graph analysis of various application domains. Given two graphs, the graph isomorphism problem is to determine whether there exists an isomorphism between them. As real-world graphs are getting bigger and bigger, applications demand practically fast algorithms that can run on large-scale graphs. However, existing approaches such as graph canonization and subgraph isomorphism show limited performances on large-scale graphs either in time or space. In this paper, we propose a new approach to graph isomorphism, which is the framework of pairwise color refinement and efficient backtracking. The main features of our approach are: (1) pairwise color refinement and binary cell mapping (2) compressed CS (candidate space), and (3) partial failing set, which together lead to a much faster and scalable algorithm for graph isomorphism. Extensive experiments with real-world datasets show that our approach outperforms state-of-the-art algorithms by up to orders of magnitude in terms of running time.
机译:图同构是各种应用领域的图分析中的核心问题。给定两个图表,图形同构问题是确定它们之间是否存在同构。随着真实世界的图表越来越大,应用需要实际上可以在大规模图中运行的快速算法。然而,现有方法如图形典可化和子图同样在时间或空间中显示出大型图形的有限性能。在本文中,我们提出了一种新的图形同构方法,这是成对彩色细化和高效回溯的框架。我们方法的主要特点是:(1)成对彩色细化和二进制单元映射(2)压缩CS(候选空间),(3)部分失败集合,其共同导致图表同构术的更快和可扩展算法。具有现实世界数据集的广泛实验表明,我们的方法在运行时间方面优于最高级的最新算法。

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