Weighted Document Frequency for feature selection in text classification

Baoli Li, Q. Yan, Zhenqiang Xu, Guicai Wang
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引用次数: 9

Abstract

In the past research, Document Frequency (DF) has been validated to be a simple yet quite effective measure for feature selection in text classification. The calculation is based on how many documents in a collection contain a feature, which can be a word, a phrase, a n-gram, or a specially derived attribute. The counting process takes a binary strategy: if a feature appears in a document, its DF will be increased by one. This traditional DF metric concerns only about whether a feature appears in a document, but does not consider how important the feature is in that document. Obviously, thus counted document frequency is very likely to introduce much noise. Therefore, a weighted document frequency (WDF) is proposed and expected to reduce such noise to some extent. Extensive experiments on two text classification datasets demonstrate the effectiveness of the proposed measure.
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基于加权文档频率的文本分类特征选择
在过去的研究中,文档频率(DF)已经被证明是一种简单而有效的文本分类特征选择方法。计算是基于集合中有多少文档包含一个特征,这个特征可以是一个单词、一个短语、一个n-gram或一个特殊派生的属性。计数过程采用二进制策略:如果一个特征出现在文档中,它的DF将增加1。这种传统的DF度量只关注某个特性是否出现在文档中,而不考虑该特性在该文档中的重要性。显然,这样计算文档频率很可能会引入很多噪声。因此,提出了加权文档频率(WDF),并期望能在一定程度上降低这种噪声。在两个文本分类数据集上的大量实验证明了该方法的有效性。
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