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Frequent subgraph mining algorithms for single large graphs — A brief survey

机译:单个大图的频繁子图挖掘算法—简要调查

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Modeling data as a graph has proved an efficient approach considering huge amount of data and large number of relationships among them. The process of mining data sets, represented as graph structures, called graph mining is widely studied in bioinformatics, computer networks, chemical reactions, social networks, program flow structures, etc. Frequent Subgraph Mining is defined as finding all the subgraphs in a given graph that appear more number of times than a given value. Frequent subgraph mining process for single large graph consists of three phases, i.e., candidate generation, support computation and result generation and sets of techniques used in each phase. This paper provides a brief survey of the frequent subgraph mining algorithms focusing on the type of techniques they use in the algorithm in respective phases.
机译:考虑到海量数据以及它们之间的大量关系,将数据建模为图形已被证明是一种有效的方法。在生物信息学,计算机网络,化学反应,社交网络,程序流程结构等方面,广泛地研究了以图结构表示的数据集的挖掘过程,称为图挖掘。频繁子图挖掘的定义是在给定图中查找所有子图。出现次数超过给定值的次数。单个大图的频繁子图挖掘过程包括三个阶段,即候选者生成,支持计算和结果生成以及每个阶段中使用的技术集。本文简要介绍了频繁子图挖掘算法,重点介绍了它们在各个阶段在算法中使用的技术类型。

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