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An Ensemble Learning Method for Text Classification Based on Heterogeneous Classifiers

机译:基于异构分类的文本分类的集合学习方法

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Ensemble learning can improve the accuracy of the classification algorithm and it has been widely used. Traditional ensemble learning methods include bagging, boosting and other methods, both of which are ensemble learning methods based on homogenous base classifiers, and obtain a diversity of base classifiers only through sample perturbation. However, heterogenous base classifiers tend to be more diverse, and multi-angle disturbances tend to obtain a variety of base classifiers. This paper presents a text classification ensemble learning method based on multi-angle perturbation heterogeneous base classifier, and validates the effectiveness of the algorithm through experiments.
机译:集合学习可以提高分类算法的准确性,它已被广泛使用。传统的集合学习方法包括袋装,提升和其他方法,这两种方法都是基于均匀基础分类器的集合学习方法,并且仅通过样本扰动获得基础分类器的多样性。然而,异质基础分类器倾向于更多样化,并且多角度干扰倾向于获得各种基础分类器。本文介绍了基于多角度扰动异构基础分类器的文本分类集合学习方法,并通过实验验证算法的有效性。

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