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A new text clustering method based on Huffman encoding algorithm

机译:一种基于霍夫曼编码算法的新文本聚类方法

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Clustering of text data is a widely studied data mining problem and has a number of applications such as spam detection, document organization and indexing, IP-address streams, credit-card transaction streams, and so on. However, the clustering of text data is still in early stage, because the research focused so far on the case of quantitative or categorical data. In this paper we propose a new method for improving the clustering accuracy of text data. Our method encodes the string values of a dataset using Huffman encoding algorithm, and declares these attributes as integer in the cluster evaluation phase. In the experimental part, we compared the cluster label assigned by the proposed method to each instance of the dataset with its real category, and we obtained a better clustering accuracy than the one found with traditional methods. This method is useful when the dataset to be clustered has only string attributes, because in this case, a traditional clustering method does not recognize, or recognize with a low accuracy, the category of instances.
机译:文本数据的聚类是一个广泛研究的数据挖掘问题,具有许多应用程序,如垃圾邮件检测,文档组织和索引,IP地址流,信用卡事务流等。但是,文本数据的聚类仍处于早期阶段,因为该研究迄今为止对定量或分类数据的情况集中。在本文中,我们提出了一种提高文本数据的聚类精度的新方法。我们的方法使用Huffman编码算法编码数据集的字符串值,并将这些属性声明为群集评估阶段中的整数。在实验部分中,我们将所提出的方法分配的群集标签与其实际类型的实例进行了比较,我们获得了比具有传统方法所发现的聚类精度更好的聚类精度。当要群集的数据集仅具有字符串属性时,此方法很有用,因为在这种情况下,传统的聚类方法无法识别,或以低精度识别,或识别实例类别。

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