首页> 外文会议>International Conference on Modeling Decisions for Artificial Intelligence(MDAI 2004); 20040802-20040804; Barcelona; ES >Combining Multiple Classifiers Using Dempster's Rule of Combination for Text Categorization
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Combining Multiple Classifiers Using Dempster's Rule of Combination for Text Categorization

机译:使用Dempster组合规则对多个分类器进行文本分类

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摘要

In this paper, we present an investigation into the combination of four different classification methods for text categorization using Dempster's rule of combination. These methods include the Support Vector Machine, kNN (nearest neighbours), kNN model-based approach (kNNM), and Rocchio methods. We first present an approach for effectively combining the different classification methods. We then apply these methods to a benchmark data collection of 20-newsgroup, individually and in combination. Our experimental results show that the performance of the best combination of the different classifiers on the 10 groups of the benchmark data can achieve 91.07% classification accuracy, which is 2.68% better than that of the best individual method, SVM, on average.
机译:在本文中,我们将研究使用Dempster组合规则对四种不同分类方法进行文本分类的组合。这些方法包括支持向量机,kNN(最近邻),基于kNN模型的方法(kNNM)和Rocchio方法。我们首先提出一种有效组合不同分类方法的方法。然后,我们将这些方法分别或组合应用于20个新闻组的基准数据收集。我们的实验结果表明,在10组基准数据上使用不同分类器的最佳组合可以达到91.07%的分类精度,比最佳的单独方法SVM的平均精度高2.68%。

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