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Bayesian Variable Selection for Fractional Factorial Experiments with Multilevel Categorical Factors

机译:多级分类因子分数阶因子实验的贝叶斯变量选择

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Fractional factorial experiments are an exceedingly important tool to the scientist or engineer working in virtually any sector of industry. As was first demonstrated by Box and Meyer (1993), what has become known as the Bayesian variable-selection approach is a useful addition to the traditional analysis techniques, due to its ability to identify "difficult-to-spot" interaction effects in experiments with complex aliasing. However, the published experiments on which this approach has been applied consist either of two-level factors or factors with quantitative levels. A multilevel categorical factor differs in that its effect must be represented by more than one parameter in the model, these being the regression coefficients associated with a set of dummy variables. Regardless of how the dummy variables are selected, it is not reasonable to assume that these parameters are exchangeable either among themselves or between parameters representing the effect of other factors. Hence, the priors proposed to date cannot be used. We present a simple multivariate normal prior for this effect that is a natural extension of the prior used by previous authors for two-level factors and demonstrate its effectiveness by reanalyzing two multilevel factorial experiments with very complex aliasing. [PUBLICATION ABSTRACT] Show less
机译:对于几乎在任何行业中工作的科学家或工程师来说,分数阶乘实验都是极其重要的工具。正如Box和Meyer(1993)首次证明的那样,贝叶斯变量选择方法是对传统分析技术的有用补充,因为它具有在实验中识别“难于发现”相互作用的能力。具有复杂的别名。但是,已应用此方法的已发布实验由两个级别的因素或具有定量级别的因素组成。多级分类因子的不同之处在于,其影响必须由模型中的多个参数表示,这些参数是与一组虚拟变量关联的回归系数。无论如何选择虚拟变量,都无法合理地假设这些参数在它们之间或代表其他因素影响的参数之间是可互换的。因此,迄今建议的先验不能使用。我们为这种效果提供了一个简单的多元正态先验,它是先前作者对两级因子使用的先验的自然扩展,并通过重新分析两个具有非常复杂的别名的多级析因实验来证明其有效性。 [出版物摘要]显示较少

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