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Analyzing different prototype selection techniques for dynamic classifier and ensemble selection

机译:分析用于动态分类器和集成选择的不同原型选择技术

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In dynamic selection (DS) techniques, only the most competent classifiers, for the classification of a specific test sample are selected to predict the sample's class labels. The more important step in DES techniques is estimating the competence of the base classifiers for the classification of each specific test sample. The classifiers' competence is usually estimated using the neighborhood of the test sample defined on the validation samples, called the region of competence. Thus, the performance of DS techniques is sensitive to the distribution of the validation set. In this paper, we evaluate six prototype selection techniques that work by editing the validation data in order to remove noise and redundant instances. Experiments conducted using several state-of-the-art DS techniques over 30 classification problems demonstrate that by using prototype selection techniques we can improve the classification accuracy of DS techniques and also significantly reduce the computational cost involved.
机译:在动态选择(DS)技术中,仅选择最能胜任的分类器来对特定测试样品进行分类,以预测样品的分类标签。 DES技术中更重要的一步是估计基本分类器对每个特定测试样品进行分类的能力。通常使用在验证样本上定义的测试样本的邻域(称为能力区域)来估算分类器的能力。因此,DS技术的性能对验证集的分布很敏感。在本文中,我们评估了六种原型选择技术,这些技术通过编辑验证数据以消除噪声和冗余实例而起作用。使用30种分类问题的几种最先进的DS技术进行的实验表明,通过使用原型选择技术,我们可以提高DS技术的分类准确性,还可以显着降低所涉及的计算成本。

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