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RandGA: injecting randomness into parallel genetic algorithm for variable selection

机译:RandGA:将随机性注入并行遗传算法中进行变量选择

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摘要

Recently, the ensemble learning approaches have been proven to be quite effective for variable selection in linear regression models. In general, a good variable selection ensemble should consist of a diverse collection of strong members. Based on the parallel genetic algorithm (PGA) proposed in [41], in this paper, we propose a novel method RandGA through injecting randomness into PGA with the aim to increase the diversity among ensemble members. Using a number of simulated data sets, we show that the newly proposed method RandGA compares favorably with other variable selection techniques. As a real example, the new method is applied to the diabetes data.
机译:最近,已证明集成学习方法对于线性回归模型中的变量选择非常有效。通常,一个好的变量选择集合应由强大成员的不同集合组成。基于文献[41]中提出的并行遗传算法(PGA),我们通过向PGA中注入随机性提出了一种新的RandGA方法,目的是增加集合成员之间的多样性。使用大量模拟数据集,我们表明,新提出的方法RandGA与其他变量选择技术相比具有优势。作为一个真实的例子,该新方法被应用于糖尿病数据。

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