N-Clustering of Text Documents Using Graph Mining Techniques

B. Rao
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引用次数: 1

Abstract

The chapter is about the clustering of text documents based on the input of the n-number of words on the m-number of text documents using graph mining techniques. The author has proposed an algorithm for clustering of text documents by inputting n-number of words on m-number of text documents. First of all the proposed algorithm starts the selection of documents with extension name “.txt” from m-numbers of documents having various types of extension names. The n-number of words are input on the selected “.txt” documents, the algorithm starts n-clustering of text documents based on an n-input word. This is possible by way of creation of a document-word frequency matrix in the memory. Then the frequency-word table is converted into the un-oriented document-word incidence matrix by replacing all non-zeros with 1s. Using the un-oriented document-word incidence matrix, the algorithm starts the creation of n-number of clusters of text documents having the presence of words ranging from 1 to n respectively. Finally, these n-clusters based on word-wise as well as 1 to n word-wise.
基于图挖掘技术的文本文档n聚类
本章是关于使用图挖掘技术基于m个文本文档上n个单词的输入对文本文档进行聚类。作者提出了一种通过在m个文本文档上输入n个单词对文本文档进行聚类的算法。首先,该算法从m个具有不同类型扩展名的文档中选择扩展名为“。txt”的文档。在选择的“。txt”文档上输入n个单词,算法基于n个输入单词开始对文本文档进行n次聚类。这可以通过在内存中创建文档-单词频率矩阵来实现。然后将频率词表转换为无导向的文档词关联矩阵,方法是将所有非零替换为1。使用无导向的文档-单词关联矩阵,该算法开始创建n个文本文档簇,这些文本文档的单词的存在范围分别为1到n。最后,这n个簇是基于单词的,也是基于1到n个单词的。
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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