D-colSimulation:基于单一大图colSimulation的频繁图模式挖掘的分布式方法

Guanqi Hua, Junhua Zhang, Li-zhen Cui, Wei Guo, Xudong Lu, Wei He
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引用次数: 0

摘要

图数据的频繁模式挖掘是近年来的研究热点。目前,最常用的图模式挖掘方法是利用子图同构的概念对数据图中的候选图模式进行匹配。然而,在某些匹配精度不太严格的应用中,子图同构的拓扑约束可能会丢失一些有意义的频繁模式。仿真匹配在图形模式匹配中起着重要的作用。然而,在频繁的图模式挖掘中,它可能导致数据图中连接的候选模式与不连接的子结构之间的匹配。匹配结果的拓扑结构得不到保证,极大地影响了挖掘的质量,并可能导致挖掘出大量结构重复的冗余图形模式。因此,本文提出了一种新的仿真匹配概念——colSimulation,它可以保证模式图和数据图之间的点对点匹配,有效避免冗余的挖掘结果,提高挖掘速度。本文提出的D-colSimulation是一种基于colSimulation的大规模图数据分布式频繁图模式挖掘方法。数据集实验表明,该方法不仅提高了挖掘效率,而且在子图同构性能较差的数据集上也有很好的挖掘效果。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
D-colSimulation: A Distributed Approach for Frequent Graph Pattern Mining based on colSimulation in a Single Large Graph
Frequent pattern mining in graph data is a hot topic in recent years. At present, most frequent graph pattern mining methods use the concept of subgraph isomorphism for the matching of candidate graph pattern in data graph. However, in some applications where the accuracy of matching is not so strict, the topology constraints of subgraph isomorphism may lose some meaningful frequent patterns. Simulation matching plays an important role in graph pattern matching. However, in frequent graph pattern mining, it may lead to the matching between the connected candidate pattern and the disconnected substructure in the data graph. The topology of matching results can not be guaranteed, which greatly affects the quality of mining, and may lead to mining a large number of redundant graphics patterns with repeated structure. Therefore, this paper proposes a new concept of simulation matching - colSimulation, which can ensure the point-to-point matching between pattern graph and data graph, effectively avoid redundant mining results and improve the mining speed. The D-colSimulation proposed in this paper is a distributed frequent graph pattern mining method based on colSimulation for large-scale graph data. Experiments on datasets show that our method not only improves the mining efficiency, but also performs well on data sets with poor performance of subgraph isomorphism.
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