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The Role of Combining Rules in Bagging and Boosting

机译:将规则结合在袋装和提升方面的作用

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摘要

To improve weak classifiers bagging and boosting could be used. These techniques are based on combining classifiers. Usually, a simple majority vote or a weighted majority vote are used as combining rules in bagging and boosting. However, other combining rules such as mean, product and average are possible. In this paper, we study bagging and boosting in Linear Discriminant Analysis (LDA) and the role of combining rules in bagging and boosting. Simulation studies, carried out for two artificial data sets and one real data set, show that bagging and boosting might be useful in LDA: bagging for critical training sample sizes and boosting for large training sample sizes. In contrast to a common opinion, we demonstrate that the usefulness of boosting does not directly depend on the instability of a classifier. It is also shown that the choice of the combining rule may affect the performance of bagging and boosting.
机译:为了改善弱分类器,可以使用袋装和提升。这些技术基于组合分类器。通常,简单的多数票或加权多数票用作袋装和升压的结合规则。然而,其他组合规则如平​​均值,产品和平均值。在本文中,我们研究了线性判别分析(LDA)的袋装和提升,以及组合袋装和升压规则的作用。为两个人工数据集进行仿真研究和一个真实数据集,表明装袋和提升可能在LDA中有用:适用于临界训练样本尺寸并提高大型训练样本尺寸的袋装。与普遍意见相比,我们证明了升压的有用性并不直接取决于分类器的不稳定性。还表明,组合规则的选择可能会影响装袋和升压的性能。

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