Scalable Diversified Top-k Pattern Matching in Big Graphs

IF 4.3 3区 材料科学 Q1 ENGINEERING, ELECTRICAL & ELECTRONIC
Aissam Aouar , Saïd Yahiaoui , Lamia Sadeg , Kadda Beghdad Bey
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引用次数: 0

Abstract

Typically, graph pattern matching is expressed in terms of subgraph isomorphism. Graph simulation and its variants were introduced to reduce the time complexity and obtain more meaningful results in big graphs. Among these models, the matching subgraphs obtained by tight simulation are more compact and topologically closer to the pattern graph than results produced by other approaches. However, the number of resulting subgraphs can be huge, overlapping each other and unequally relaxed from the pattern graph. Hence, we introduce a ranking and diversification method for tight simulation results, which allows the user to obtain the most diversified and relevant matching subgraphs. This approach exploits the weights on edges of the big graph to express the interest of the matching subgraph by tight simulation. Furthermore, we provide distributed scalable algorithms to evaluate the proposed methods based on distributed programming paradigms. The experiments on real data graphs succeed in demonstrating the effectiveness of the proposed models and the efficiency of the associated algorithms. The result diversification reached 123% within a time frame that does not exceed 40%, on average, of the duration required for tight simulation graph pattern matching.

大图中的可扩展多样化 Top-k 模式匹配
通常,图模式匹配用子图同构来表示。图模拟及其变体的引入是为了降低时间复杂性,并在大型图中获得更有意义的结果。在这些模型中,通过紧密模拟得到的匹配子图比其他方法得到的结果更紧凑,拓扑上更接近模式图。然而,所得到的子图数量可能非常庞大,相互重叠,与模式图的松弛程度也不相等。因此,我们为严密的模拟结果引入了一种排序和多样化方法,使用户能够获得最多样化和最相关的匹配子图。这种方法利用了大图边上的权重,通过严密模拟来表达匹配子图的相关性。此外,我们还提供了基于分布式编程范式的分布式可扩展算法来评估所提出的方法。在真实数据图上的实验成功证明了所提模型的有效性和相关算法的效率。在平均不超过严密模拟图模式匹配所需时间 40% 的情况下,结果多样化达到了 123%。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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来源期刊
CiteScore
7.20
自引率
4.30%
发文量
567
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