A New Approach for Mining Correlated Frequent Subgraphs

Mohammad Ehsan Shahmi Chowdhury, Chowdhury Farhan Ahmed, C. Leung
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引用次数: 21

Abstract

Nowadays graphical datasets are having a vast amount of applications. As a result, graph mining—mining graph datasets to extract frequent subgraphs—has proven to be crucial in numerous aspects. It is important to perform correlation analysis among the subparts (i.e., elements) of the frequent subgraphs generated using graph mining to observe interesting information. However, the majority of existing works focuses on complexities in dealing with graphical structures, and not much work aims to perform correlation analysis. For instance, a previous work realized in this regard, operated with a very naive raw approach to fulfill the objective, but dealt only on a small subset of the problem. Hence, in this article, a new measure is proposed to aid in the analysis for large subgraphs, mined from various types of graph transactions in the dataset. These subgraphs are immense in terms of their structural composition, and thus parallel the entire set of graphs in real-world. A complete framework for discovering the relations among parts of a frequent subgraph is proposed using our new method. Evaluation results show the usefulness and accuracy of the newly defined measure on real-life graphical datasets.
一种挖掘相关频繁子图的新方法
如今,图形数据集有着大量的应用。因此,图挖掘(挖掘图数据集以提取频繁子图)在许多方面都被证明是至关重要的。在使用图挖掘生成的频繁子图的子部分(即元素)之间进行相关性分析以观察有趣的信息是很重要的。然而,现有的大部分工作都集中在处理图形结构的复杂性上,并没有太多的工作旨在进行相关性分析。例如,以前在这方面实现的一项工作,用一种非常幼稚的原始方法来实现目标,但只处理了问题的一小部分。因此,在本文中,提出了一种新的度量来帮助分析从数据集中的各种类型的图事务中挖掘的大型子图。这些子图就其结构组成而言是巨大的,因此与现实世界中的整个图集平行。利用我们的新方法,提出了一个发现频繁子图各部分之间关系的完整框架。评估结果显示了新定义的度量在实际图形数据集上的有效性和准确性。
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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