An approach to merging of two community subgraphs to form a community graph using graph mining techniques

B. Rao, A. Mitra
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引用次数: 12

Abstract

Data mining is known for discovering frequent sub-structures. After finding certain similarity, it is easy to merge the sub-structures to form a larger structure for proper information extraction. To carry out this process, we have proposed new algorithms which merge two community subgraphs in an efficient and simpler way. For our work, we have followed graph matching technique by matching one-to-one correspondence. The three algorithms that have been proposed in this paper are, the first algorithm explains about finding the order of merged communities and to make available of initial form of merged community matrix. The second algorithm explains about creation of adjacency matrix community graph and the third algorithm uses the adjacency matrices of community graph and explains about creation of merged community adjacency matrix. Further, we have verified our proposed approach by implementing it. An appropriate example with the set of input and obtained outputs has been explained. The obtained results are satisfactory. The results were obtained after execution of our programs. Snap-shot of the program output have been included in the paper.
一种利用图挖掘技术将两个社区子图合并形成社区图的方法
数据挖掘以发现频繁的子结构而闻名。在找到一定的相似性后,很容易将子结构合并形成一个更大的结构,以便进行适当的信息提取。为了实现这一过程,我们提出了一种新的算法,以一种高效和简单的方式合并两个社区子图。在我们的工作中,我们通过匹配一对一的对应关系来遵循图匹配技术。本文提出的三种算法是:第一种算法解释了如何找到合并社团的顺序,并给出合并社团矩阵的初始形式。第二种算法解释邻接矩阵社区图的创建,第三种算法使用社区图的邻接矩阵并解释合并社区邻接矩阵的创建。此外,我们已通过实施我们所提议的方法来验证它。已经解释了一个适当的示例,其中包含一组输入和获得的输出。所得结果令人满意。在程序执行后得到了结果。本文还提供了程序输出的快照。
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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