AFFINITY PROPAGATION AND K-MEANS ALGORITHM FOR DOCUMENT CLUSTERING BASED ON SEMANTIC SIMILARITY

Avan A. Mustafa, Karwan Jacksi
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Abstract

Clustering text documents is the process of dividing textual material into groups or clusters. Due to the large volume of text documents in electronic forms that have been made with the development of internet technology, document clustering has gained considerable attention. Data mining methods for grouping these texts into meaningful clusters are becoming a critical method. Clustering is a branch of data mining that is a blind process used to group data by a similarity known as a cluster. However, the clustering should be based on semantic similarity rather than using syntactic notions, which means the documents should be clustered according to their meaning rather than keywords. This article presents a novel strategy for categorizing articles based on semantic similarity. This is achieved by extracting document descriptions from the IMDB and Wikipedia databases. The vector space is then formed using TFIDF, and clustering is accomplished using the Affinity propagation and K-means methods. The findings are computed and presented on an interactive website.
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基于语义相似度的文档聚类的亲和传播和k-means算法
聚类文本文档是将文本材料分成组或簇的过程。随着互联网技术的发展,大量的电子形式的文本文档被制作出来,文档聚类受到了广泛的关注。将这些文本分组为有意义的聚类的数据挖掘方法正在成为一种关键的方法。聚类是数据挖掘的一个分支,它是一个盲目的过程,用于根据相似性对数据进行分组,称为集群。但是,聚类应该基于语义相似性,而不是使用语法概念,这意味着应该根据文档的含义而不是关键字对文档进行聚类。本文提出了一种基于语义相似度的文章分类策略。这是通过从IMDB和Wikipedia数据库提取文档描述来实现的。然后使用TFIDF形成向量空间,并使用Affinity propagation和K-means方法完成聚类。调查结果被计算出来并在一个互动网站上公布。
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审稿时长
6 weeks
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