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Using Bagging and Cross-Validation to Improve Ensembles Based on Penalty Terms

机译:使用袋装和交叉验证来改进基于惩罚条款的合奏

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Decorrelated and CELS are two ensembles that modify the learning procedure to increase the diversity among the networks of the ensemble. Although they provide good performance according to previous comparatives, they are not as well known as other alternatives, such as Bagging and Boosting, which modify the learning set in order to obtain classifiers with high performance. In this paper, two different procedures are introduced to Decorrelated and CELS in order to modify the learning set of each individual network and improve their accuracy. The results show that these two ensembles are improved by using the two proposed methodologies as specific set generators.
机译:去相关和CELS是两个组合,可以修改学习程序,以提高集合网络之间的多样性。虽然它们根据以前的比较提供了良好的性能,但它们不像其他替代方案一样,例如装袋和升级,这改变了学习集,以便获得具有高性能的分类器。在本文中,将两种不同的程序引入去相关和CEL,以便修改每个网络的学习集并提高其准确性。结果表明,通过使用两种提出的方​​法作为特定设置发生器来改善这两个合奏。

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