TF-ICF: A New Term Weighting Scheme for Clustering Dynamic Data Streams

Joel W. Reed, Y. Jiao, T. Potok, Brian A. Klump, M.T. Elmore, A. Hurson
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引用次数: 158

Abstract

In this paper, we propose a new term weighting scheme called term frequency-inverse corpus frequency (TF-ICF). It does not require term frequency information from other documents within the document collection and thus, it enables us to generate the document vectors of N streaming documents in linear time. In the context of a machine learning application, unsupervised document clustering, we evaluated the effectiveness of the proposed approach in comparison to five widely used term weighting schemes through extensive experimentation. Our results show that TF-ICF can produce document clusters that are of comparable quality as those generated by the widely recognized term weighting schemes and it is significantly faster than those methods
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TF-ICF:一种新的动态数据流聚类术语加权方案
在本文中,我们提出了一种新的术语加权方案,称为术语频率-逆语料频率(TF-ICF)。它不需要文档集合中其他文档的词频信息,因此,它使我们能够在线性时间内生成N个流文档的文档向量。在机器学习应用无监督文档聚类的背景下,我们通过大量的实验,与五种广泛使用的术语加权方案相比,评估了所提出方法的有效性。我们的结果表明,TF-ICF可以产生与广泛认可的术语加权方案产生的文档簇质量相当的文档簇,并且比那些方法要快得多
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