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Improving a SVM Meta-classifier for Text Documents by using Naive Bayes

机译:使用朴素贝叶斯改进文本文档的SVM元分类器

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Text categorization is the problem of classifying text documents into a set of predefined classes. In this paper, we investigated two approaches: a) to develop a classifier for text document based on Naive Bayes Theory and b) to integrate this classifier into a meta-classifier in order to increase the classification accuracy. The basic idea is to learn a meta-classifier to optimally select the best component classifier for each data point. The experimental results show that combining classifiers can significantly improve the classification accuracy and that our improved meta-classification strategy gives better results than each individual classifier. For Reuters2000 text documents we obtained classification accuracies up to 93.87%
机译:文本分类是将文本文档分类为一组预定义类的问题。在本文中,我们研究了两种方法:a)基于朴素贝叶斯理论开发文本文档分类器,b)将分类器集成到元分类器中以提高分类精度。基本思想是学习元分类器,以针对每个数据点最佳地选择最佳组件分类器。实验结果表明,组合分类器可以显着提高分类准确性,并且我们改进的元分类策略比每个单独的分类器提供更好的结果。对于Reuters2000文本文件,我们获得了高达93.87%的分类精度

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