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A Bayesian Analysis of Very Small Unreplicated Experiments

机译:非常小的不可重复实验的贝叶斯分析

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It is not uncommon to deal with very small experiments in practice. For example, if the experiment is conducted on the production process, it is likely that only a very few experimental runs will be allowed. If testing involves the destruction of expensive experimental units, we might only have very small fractions as experimental plans. In this paper, we will consider the analysis of very small factorial experiments with only four or eight experimental runs. In addition, the methods presented here could be easily applied to larger experiments. A Daniel plot of the effects to judge significance may be useless for this type of situation. Instead, we will use different tools based on the Bayesian approach to judge significance. The first tool consists of the computation of the posterior probability that each effect is significant. The second tool is referred to in Bayesian analysis as the posterior distribution for each effect. Combining these tools with the Daniel plot gives us more elements to judge the significance of an effect. Because, in practice, the response may not necessarily be normally distributed, we will extend our approach to the generalized linear model setup. By simulation, we will show that not only in the case of discrete responses and very small experiments, the usual large sample approach for modeling generalized linear models may produce a very biased and variable estimators, but also that the Bayesian approach provides a very sensible results.
机译:在实践中处理非常小的实验并不少见。例如,如果实验是在生产过程中进行的,则很可能只允许进行很少的实验。如果测试涉及破坏昂贵的实验装置,那么我们可能只有很小一部分作为实验计划。在本文中,我们将考虑仅进行四到八个实验运行的非常小的阶乘实验的分析。此外,此处介绍的方法可以轻松地应用于大型实验。对于判断这种情况的重要性的丹尼尔图可能是没有用的。相反,我们将基于贝叶斯方法使用不同的工具来判断重要性。第一个工具包括计算每种效应显着的后验概率。在贝叶斯分析中,第二种工具称为每种效果的后验分布。将这些工具与丹尼尔图结合使用,可以为我们提供更多元素来判断效果的重要性。因为在实践中,响应不一定是正态分布的,所以我们将把方法扩展到广义线性模型的建立。通过仿真,我们将表明,不仅在离散响应和非常小的实验的情况下,用于建模广义线性模型的常用大样本方法可能会产生非常有偏差和可变的估计量,而且贝叶斯方法提供了非常明智的结果。

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