A combined approach of formal concept analysis and text mining for concept based document clustering

Nyeint Nyeint Myat, K. Hla
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引用次数: 10

Abstract

Nowadays, the demand of conceptual document clustering is becoming increase to manage various types of vast amount of information published on the World Wide Web. In this paper, we use formal concept analysis (FCA) method for clustering documents according to their formal contexts. Concept hierarchy of documents is built using the formal concepts of the documents in the document corpus. We use tf.idf (term frequency /spl times/ inverse document frequency) term weighting model to reduce less useful concepts from these formal concepts and the association and correlation mining techniques to analyze the relationship of terms in the document corpus.
一种形式概念分析与文本挖掘相结合的基于概念的文档聚类方法
目前,为了管理万维网上发布的各类海量信息,对概念文档聚类的需求越来越大。在本文中,我们使用形式概念分析(FCA)方法根据文档的形式上下文进行聚类。使用文档语料库中文档的正式概念构建文档的概念层次结构。我们用tf。Idf (term frequency /spl times/ inverse document frequency)术语加权模型,从这些形式化概念中减少不太有用的概念,并使用关联和相关性挖掘技术分析文档语料库中术语之间的关系。
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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