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Ensemble Approaches for Regression: A Survey

机译:集成的回归方法:一项调查

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摘要

The goal of ensemble regression is to combine several models in order to improve the prediction accuracy in learning problems with a numerical target variable. The process of ensemble learning can be divided into three phases: the generation phase, the pruning phase, and the integration phase. We discuss different approaches to each of these phases that are able to deal with the regression problem, categorizing them in terms of their relevant characteristics and linking them to contributions from different fields. Furthermore, this work makes it possible to identify interesting areas for future research.
机译:集成回归的目标是组合多个模型,以提高带有数字目标变量的学习问题中的预测准确性。集成学习的过程可以分为三个阶段:生成阶段,修剪阶段和集成阶段。我们讨论了每个阶段能够解决回归问题的不同方法,并根据它们的相关特征对其进行了分类,并将它们与来自不同领域的贡献联系在一起。此外,这项工作使确定未来研究的有趣领域成为可能。

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