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A new variable selection method based on SVM for analyzing supersaturated designs

机译:基于SVM分析超饱和设计的新变量选择方法

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摘要

Supersaturated designs (SSDs) are designs whose factors exceeds run size; thus, there are not enough runs for estimating all the main effects. They are commonly used in screening experiments, where the primary goal is to identify the few, but dominant, active factors, keeping the cost as low as possible. The development of new statistical methods inspired by machine learning algorithms is increasing rapidly, especially nowadays. One of such methods is the support vector machine recursive feature elimination (SVM-RFE), which manages to extract the informative genes in classification problems, while it achieves extremely high performance. In this article, we study a variable selection method for regression problems, called SVR-RFE, to screen active effects in both two-level and mixed-level designs. Simulation studies demonstrate that this procedure is effective enough, especially in terms of statistical power.
机译:超饱和设计(SSD)是设计超过运行规模的设计; 因此,没有足够的运行来估算所有主要效果。 它们通常用于筛选实验,其中主要目标是识别少数但主导的,积极的因素,使成本尽可能低。 由机器学习算法启发的新统计方法的发展正在迅速增加,特别是如今。 其中一种方法是支持向量机递归特征消除(SVM-RFE),该特征消除(SVM-RFE),该特征是在分类问题中提取信息中的信息,同时实现了极高的性能。 在本文中,我们研究了一个可变选择方法,用于回归问题,称为SVR-RFE,以筛选两级和混合级设计中的主动效果。 仿真研究表明,该程序足够有效,特别是在统计权力方面。

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