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Turning from TF-IDF to TF-IGM for term weighting in text classification

机译:从TF-IDF到TF-IGM进行文本分类中的术语加权

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摘要

Massive textual data management and mining usually rely on automatic text classification technology. Term weighting is a basic problem in text classification and directly affects the classification accuracy. Since the traditional TF-IDF (term frequency & inverse document frequency) is not fully effective for text classification, various alternatives have been proposed by researchers. In this paper we make comparative studies on different term weighting schemes and propose a new term weighting scheme, TF-IGM (term frequency & inverse gravity moment), as well as its variants. TF-IGM incorporates a new statistical model to precisely measure the class distinguishing power of a term. Particularly, it makes full use of the fine-grained term distribution across different classes of text. The effectiveness of TF-IGM is validated by extensive experiments of text classification using SVM (support vector machine) and kNN (k nearest neighbors) classifiers on three commonly used corpora. The experimental results show that TF-IGM outperforms the famous TF-IDF and the state-of-the-art supervised term weighting schemes. In addition, some new findings different from previous studies are obtained and analyzed in depth in the paper. (C) 2016 Elsevier Ltd. All rights reserved.
机译:大量的文本数据管理和挖掘通常依靠自动文本分类技术。术语权重是文本分类中的一个基本问题,直接影响分类的准确性。由于传统的TF-IDF(术语频率和文档的逆频率)对于文本分类不是完全有效的,因此研究人员提出了各种替代方案。在本文中,我们对不同的术语加权方案进行了比较研究,并提出了一种新的术语加权方案TF-IGM(术语频率和反重力矩)及其变体。 TF-IGM结合了新的统计模型,可以精确地测量术语的类别区分能力。特别是,它充分利用了跨不同类别文本的细粒度术语分布。 TF-IGM的有效性通过在3种常用语料库上使用SVM(支持向量机)和kNN(k最近邻)分类器进行的文本分类的广泛实验得到了验证。实验结果表明,TF-IGM优于著名的TF-IDF和最新的监督术语加权方案。此外,本文还获得了一些与先前研究不同的新发现,并对它们进行了深入分析。 (C)2016 Elsevier Ltd.保留所有权利。

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