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Ensemble Learning: A Study on Different Variants of the Dynamic Selection Approach

机译:集成学习:动态选择方法的不同变体研究

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Integration methods for ensemble learning can use two different approaches: combination or selection. The combination approach (also called fusion) consists on the combination of the predictions obtained by different models in the ensemble to obtain the final ensemble prediction. The selection approach selects one (or more) models from the ensemble according to the prediction performance of these models on similar data from the validation set. Usually, the method to select similar data is the k-nearest neighbors with the. Euclidean distance. In this paper we discuss other approaches to obtain similar data for the regression problem. We show that using similarity measures according to the target values improves results. We also show that selecting dynamically several models for the prediction task increases prediction accuracy comparing to the selection of just one model.
机译:集成学习的集成方法可以使用两种不同的方法:组合或选择。组合方法(也称为融合)包括通过合奏中的不同模型获得的预测的组合,以获得最终的合奏预测。选择方法根据这些模型对来自验证集的相似数据的预测性能,从集合中选择一个(或多个)模型。通常,选择相似数据的方法是与k最近邻。欧氏距离。在本文中,我们讨论了为回归问题获取相似数据的其他方法。我们表明,根据目标值使用相似性度量可以改善结果。我们还显示,与仅选择一个模型相比,为预测任务动态选择多个模型可提高预测准确性。

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