Document Clustering Using K-Means, Heuristic K-Means and Fuzzy C-Means

V. Singh, Nisha Tiwari, Shekhar Garg
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引用次数: 79

Abstract

Document clustering refers to unsupervised classification (categorization) of documents into groups (clusters) in such a way that the documents in a cluster are similar, whereas documents in different clusters are dissimilar. The documents may be web pages, blog posts, news articles, or other text files. This paper presents our experimental work on applying K-means, heuristic K-means and fuzzy C-means algorithms for clustering text documents. We have experimented with different representations (tf, tf.idf & Boolean) and different feature selection schemes (with or without stop word removal & with or without stemming). We ran our implementations on some standard datasets and computed various performance measures for these algorithms. The results indicate that tf.idf representation, and use of stemming obtains better clustering. Moreover, fuzzy clustering produces better results than both K-means and heuristic K-means on almost all datasets, and is a more stable method.
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基于K-Means、启发式K-Means和模糊C-Means的文档聚类
文档聚类指的是对文档进行无监督分类(分类),将文档分成组(集群),这样,集群中的文档是相似的,而不同集群中的文档是不相似的。这些文档可以是网页、博客文章、新闻文章或其他文本文件。本文介绍了我们应用K-means、启发式K-means和模糊C-means算法聚类文本文档的实验工作。我们尝试了不同的表示(tf, tf。idf &布尔)和不同的特征选择方案(带或不带停止词删除&带或不带词干提取)。我们在一些标准数据集上运行了我们的实现,并计算了这些算法的各种性能度量。结果表明:tf。Idf表示,并使用词干提取获得更好的聚类。此外,模糊聚类在几乎所有数据集上的结果都优于K-means和启发式K-means,并且是一种更稳定的方法。
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