复杂图数据库中内外超团模式的发现

Tsubasa Yamamoto, Tomonobu Ozaki, T. Ohkawa
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引用次数: 2

摘要

在一些应用中,目标数据的整个结构可以自然地用“多结构图”来表示。“多结构图”是复杂图,其顶点由一组结构化数据(如项集、序列等)组成。为了抓住多结构图中的强亲和关系,本文提出了一种HFMG算法来发现成分之间高度相关的新颖而有意义的频繁模式。HFMG根据我们关注的关系,有效地挖掘出两种有意义的模式。通过真实数据集和合成数据集的实验验证了该算法的有效性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Discovery of Internal and External Hyperclique Patterns in Complex Graph Databases
In some applications, the whole structure of the target data can be represented naturally in "multi-structured graphs" that are complex graphs whose vertices consist of aset of structured data such as itemsets, sequences and so on. To catch the strong affinity relationship in multi-structured graphs, in this paper, we propose an algorithm named HFMG to discover novel and meaningful frequent patterns whose components are highly correlated with each other. HFMG mines two kinds of meaningful patterns efficiently according to which relationships we focus on. The effectiveness of the proposed algorithm is confirmed through the experiments with real and synthetic datasets.
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