利用相关系数实现英语文本文档的可靠聚类

Hrishikesh Bhaumik, Biswanath Chakraborty, A. Mukherjee, S. Bhattacharyya, Manojit Chattopadhyay
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引用次数: 4

摘要

本文提出了一种新的英语文本文档聚类方法,该方法基于在给定的文本文档集中找到文档的对相关关系。每对文档的相关系数是根据文档中单词的排名来计算的。根据传统TF-IDF因子计算的单词权重,计算文档中出现的单词的排名。发现所提出的方法能够根据其内容将给定的一组文本文档聚类为许多类,其中类的数量是未知的。实验结果表明,本文提出的基于相关系数的文本分类方法优于其他一些文本分类方法,包括使用人工神经网络的文本分类方法。
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Towards Reliable Clustering of English Text Documents Using Correlation Coefficient
This paper proposes a new approach for clustering English text documents, based on finding the pair wise correlation of documents in a given set of text documents. The correlation coefficient for each pair of documents is calculated on the basis of ranks given to the words in the documents. The ranking of the words occurring in a document is computed on the basis of weights of the words calculated according to the conventional TF-IDF factor. The proposed method is found to be able to cluster a given set of text documents into a number of classes depending on their contents where the number of classes is not known a priori. It is revealed from experimental results that the proposed method of text categorization using correlation coefficient performs better than some of the other text categorization methods, including methods that use artificial neural network.
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