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Outperforming Completely Randomized Designs

机译:优于完全随机设计

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Split-plot designs have become increasingly popular in industrial experimentation because some of the factors under investigation are often hard-to-change It is well-known that the resulting compound symmetric error structure not only affects estimation and inference procedures but also the efficiency of the experimental designs used. In this paper, we compute D-optimal first and second order split-plot designs and show that these designs, in many cases, outperform completely randomized designs in terms of D- and g-efficiency. This suggests that split-plot designs should be considered as an alternative to completely randomized designs even if running a completely randomized design is affordable.
机译:分割图设计已在工业实验中变得越来越流行,因为所研究的某些因素通常难以更改。众所周知,所得的复合对称误差结构不仅会影响估计和推理程序,而且会影响分析效率。使用实验设计。在本文中,我们计算了D最优的一阶和二阶分裂图设计,并表明在许多情况下,这些设计在D效率和g效率方面都优于完全随机的设计。这表明即使可以负担得起完全随机设计,也应将分割图设计视为完全随机设计的替代方案。

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