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Group screening method for the statistical analysis of E(f_(NOD))-optimal mixed-level supersaturated designs

机译:E(f_(NOD))-最优混合级过饱和设计统计分析的组筛选方法

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In this paper, we propose the application of group screening methods for analyzing data using E(f_(N0D))-optimal mixed-level supersaturated designs possessing the equal occurrence property. Supersaturated designs are a large class of factorial designs which can be used for screening out the important factors from a large set of potentially active variables. The huge advantage of these designs is that they reduce the experimental cost drastically, but their critical disadvantage is the high degree of confounding among factorial effects. Based on the idea of the group screening methods, the/ factors are sub-divided into g "group-factors". The "group-factors" are then studied using the penalized likelihood statistical analysis methods at a factorial design with orthogonal or near-orthogonal columns. All factors in groups found to have a large effect are then studied in a second stage of experiments. A comparison of the Type I and Type II error rates of various estimation methods via simulation experiments is performed. The results are presented in tables and discussion follows.
机译:在本文中,我们提出了使用具有相同出现属性的E(f_(N0D))-最优混合级过饱和设计进行群筛选方法分析数据的应用。过饱和设计是一大类析因设计,可用于从大量潜在活动变量中筛选出重要因素。这些设计的巨大优势在于它们可以大大降低实验成本,但是其关键的缺点是阶乘效应之间的混淆程度很高。基于分组筛选方法的思想,将/因子细分为g个“分组因子”。然后在具有正交或近似正交列的析因设计中使用惩罚似然统计分析方法研究“组因子”。然后在第二阶段的实验中研究发现有很大影响的组中的所有因素。通过模拟实验对各种估计方法的I型和II型错误率进行了比较。结果列在表中,然后进行讨论。

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