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Dynamic Ensemble Selection Using Discriminant Functions and Normalization Between Class Labels - Approach to Binary Classification

机译:使用判别函数和类标签之间的归一化的动态集合选择-二进制分类的方法

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In the classification task, the ensemble selection methods reduce the available pool of the base classifiers. The dynamic ensemble selection methods allow to find the subset of base classifiers for each test sample separately. In finding the best subset of base classifiers many methods used the so-called competence region determined for the validation data set. In this paper, we propose the dynamic ensemble selection in which the validation data set is not necessary and the competence region for the test sample is not determined. Generally, the described method uses only the decision profiles in the selection process. The experiment results based on ten data sets show that the proposed dynamic ensemble selection is a promising method for the development of multiple classifiers systems.
机译:在分类任务中,集成选择方法会减少基本分类器的可用池。动态集成选择方法允许为每个测试样本分别找到基本分类器的子集。在找到基础分类器的最佳子集时,许多方法使用了为验证数据集确定的所谓能力区域。在本文中,我们提出了动态合奏选择,其中不需要验证数据集,也没有确定测试样本的能力范围。通常,所描述的方法在选择过程中仅使用决策概况。基于十个数据集的实验结果表明,提出的动态集成选择方法是发展多分类器系统的有前途的方法。

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