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A new hybrid approach to improve the efficiency of homomorphic matching for graph rules

机译:一种提高图规则同态匹配效率的新混合方法

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Conceptual graphs (CGs) have logical backgrounds and support visual reasoning. They are widely studied and used with the development of artificial intelligence. Homomorphic matching is the basic operation for the logical deduction based on CGs, which is a NP-complete problem. When the scale of the CG database is large, how to perform efficient homomorphic matching is a key factor affecting the usage of graph rules. In this paper, the CGs are transformed into labeled undirected graphs which have no multiple edges, then a new hybrid approach is proposed to improve the efficiency of homomorphic matching for graph rules. The hybrid approach is based on the traditional backtrack algorithm with a standard filter, and there are three improvements. Firstly, in the graph data sets, which are generated and enriched by using graph rules, there are frequent patterns occurred. Therefore, optimal homomorphic matching orders (OHMOs) of graph rules can be extracted from the historical graph data. OHMOs can reduce the number of comparisons during searching homomorphisms. Secondly, label type checking orders of nodes in the hypotheses of graph rules are optimized with the frequency statistics method. Using the two-stage optimized label checking orders (OLCOs) can save the calculation time of obtaining the candidate nodes and reduce the comparison times during searching homomorphisms. Thirdly, signatures of nodes in CGs are defined, and we use them to further filter the candidate nodes, then the search space of homomorphic matching is reduced. OHMOs and OLCOs are obtained off-line and signatures are calculated incrementally, so the on-line calculation for searching homomorphisms is seldom affected. At last, a study case is conducted, and the experiment results illustrate that the proposed approach is reasonable and effective. (C) 2019 Elsevier B.V. All rights reserved.
机译:概念图(CG)具有逻辑背景并支持视觉推理。随着人工智能的发展,它们被广泛研究和使用。同态匹配是基于CG的逻辑推论的基本操作,这是一个NP完全问题。当CG数据库的规模很大时,如何执行有效的同态匹配是影响图规则使用的关键因素。本文将CG转换为没有多个边的带标签的无向图,然后提出了一种新的混合方法来提高图规则同构匹配的效率。混合方法基于具有标准过滤器的传统回溯算法,并且进行了三项改进。首先,在通过使用图规则生成和丰富的图数据集中,频繁出现模式。因此,可以从历史图数据中提取图规则的最佳同态匹配阶数(OHMO)。 OHMO可以减少搜索同态期间的比较次数。其次,利用频率统计方法优化了图规则假设中节点的标签类型检查顺序。使用两阶段优化标签检查顺序(OLCO)可以节省获得候选节点的计算时间,并减少搜索同态期间的比较时间。第三,定义了CG中节点的签名,并用它们进一步过滤候选节点,从而减少了同态匹配的搜索空间。脱机获取OHMO和OLCO,并递增计算签名,因此很少会影响搜索同态的在线计算。最后进行了研究,实验结果表明该方法是合理有效的。 (C)2019 Elsevier B.V.保留所有权利。

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