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Multiple Feature-Classifier Combination in Automated Text Classification

机译:自动文本分类中的多个特征分类器组合

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Automatic text classification (ATC) is important in applications such as indexing and organizing electronic documents in databases leading to enhancement of information access and retrieval. We propose a method which employs various types of feature sets and learning algorithms to improve classification effectiveness. Unlike the conventional methods of multi-classifier combination, the proposed method considers the contributions of various types of feature sets and classifiers. It can therefore be known as multiple feature-classifier combination (MFC) method. In this paper we present empirical evaluation of MFC using two benchmarks of text collections to determine its effectiveness. Empirical evaluation show that MFC consistently outperformed all compared methods.
机译:自动文本分类(ATC)在索引和组织数据库中的电子文档等应用中非常重要,从而提高信息访问和检索。 我们提出了一种采用各种类型的特征集和学习算法的方法来提高分类效率。 与传统的多分类器组合方法不同,所提出的方法考虑各种类型的特征集和分类器的贡献。 因此,它可以称为多个特征分类器组合(MFC)方法。 在本文中,我们使用两种文本收集基准来确定MFC的实证评估,以确定其有效性。 实证评价表明,MFC始终如一地表现了所有比较方法。

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