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首页> 外文期刊>International Journal of Pattern Recognition and Artificial Intelligence >Upper Bounding Graph Edit Distance Based on Rings and Machine Learning
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Upper Bounding Graph Edit Distance Based on Rings and Machine Learning

机译:上限图基于环和机器学习编辑距离

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摘要

The graph edit distance (GED) is a flexible distance measure which is widely used for inexact graph matching. Since its exact computation is NP-hard, heuristics are used in practice. A popular approach is to obtain upper bounds for GED via transformations to the linear sum assignment problem with error-correction (LSAPE). Typically, local structures and distances between them are employed for carrying out this transformation, but recently also machine learning techniques have been used. In this paper, we formally define a unifying framework LSAPE-GED for transformations from GED to LSAPE. We also introduce rings, a new kind of local structures designed for graphs where most information resides in the topology rather than in the node labels. Furthermore, we propose two new ring-based heuristics RING and RING-ML, which instantiate LSAPE-GED using the traditional and the machine learning-based approach for transforming GED to LSAPE, respectively. Extensive experiments show that using rings for upper bounding GED significantly improves the state of the art on datasets where most information resides in the graphs' topologies. This closes the gap between fast but rather inaccurate LSAPE-based heuristics and more accurate but significantly slower GED algorithms based on local search.
机译:图表编辑距离(GED)是一种灵活的距离测量,广泛用于不精确的图形匹配。由于其确切的计算是NP - 硬,因此在实践中使用启发式。一种流行的方法是通过纠错(LSAPE)来获得通过转换的转换来获得对线性和分配问题的上限。通常,它们之间的局部结构和距离用于执行该变换,但最近还使用了机器学习技术。在本文中,我们正式定义了从GED到LSAPE的转换的统一框架LSAPE。我们还介绍戒指,这类新的本地结构专为图形设计,大多数信息驻留在拓扑中而不是节点标签中。此外,我们提出了两个新的环形启发式环和环-ml,其使用传统和基于机器学习的方法来分别实例化LSAPE-GED,分别用于转换GED到LSAPE。广泛的实验表明,使用用于上边界的环显着改善了大多数信息在图形拓扑中所在的数据集上的最新状态。这缩短了基于LSAPE的快速但相当不准确的LEURISTICS和更准确但基于本地搜索的GED算法之间的差距。

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