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Statistical Ensemble Method (SEM): A New Meta-machine Learning Approach Based on Statistical Techniques

机译:统计集合方法(SEM):基于统计技术的新的元机学习方法

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The goal of combining the outputs of multiple models is to form an improved meta-model with higher generalization capability than the best single model used in isolation. Most popular ensemble methods do specify neither the number of component models nor their complexity. However, these parameters strongly influence the generalization capability of the meta-model. In this paper we propose an ensemble method which generates a meta-model with optimal values for these parameters. The proposed method suggests using resampling techniques to generate multiple estimations of the generalization error and multiple comparison procedures to select the models that will be combined to form the meta-model. Experimental results show the performance of the model on regression and classification tasks using artificial and real databases.
机译:组合多种模型的输出的目标是形成具有更高的概括能力的改进的元模型,而不是隔离的最佳单一模型。最受欢迎的集合方法确实没有组件模型的数量,也不是它们的复杂性。然而,这些参数强烈影响元模型的泛化能力。在本文中,我们提出了一种集合方法,该方法为这些参数的最佳值生成元模型。所提出的方法建议使用重采样技术来生成泛化误差和多个比较过程的多个估计,以选择将组合以形成元模型的模型。实验结果显示了使用人工和实际数据库的回归和分类任务模型的性能。

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