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A comparison of recent nonparametric methods for testing effects in two-by-two factorial designs

机译:近期非参数方法的比较,用于测试两倍阶乘设计中的测试效果

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The two-way two-levels crossed factorial design is a commonly used design by practitioners at the exploratory phase of industrial experiments. The F-test in the usual linear model for analysis of variance (ANOVA) is a key instrument to assess the impact of each factor and of their interactions on the response variable. However, if assumptions such as normal distribution and homoscedasticity of errors are violated, the conventional wisdom is to resort to nonparametric tests. Nonparametric methods, rank-based as well as permutation, have been a subject of recent investigations to make them effective in testing the hypotheses of interest and to improve their performance in small sample situations. In this study, we assess the performances of some nonparametric methods and, more importantly, we compare their powers. Specifically, we examine three permutation methods (Constrained Synchronized Permutations, Unconstrained Synchronized Permutations and Wald-Type Permutation Test), a rank-based method (Aligned Rank Transform) and a parametric method (ANOVA-Type Test). In the simulations, we generate datasets with different configurations of distribution of errors, variance, factor's effect and number of replicates. The objective is to elicit practical advice and guides to practitioners regarding the sensitivity of the tests in the various configurations, the conditions under which some tests cannot be used, the tradeoff between power and type I error, and the bias of the power on one main factor analysis due to the presence of effect of the other factor. A dataset from an industrial engineering experiment for thermoformed packaging production is used to illustrate the application of the various methods of analysis, taking into account the power of the test suggested by the objective of the experiment.
机译:双向两级交叉的因子设计是在工业实验的探索阶段的从业者常用的设计。用于分析方差分析的通常线性模型(ANOVA)是评估每个因素和它们对响应变量的交互的关键仪器。但是,如果违反了诸如正常分布和同性恋的假设是侵犯的,则传统的智慧是诉诸非参数测试。非参数方法,基于秩的等级以及置换,是最近调查的主题,使它们有效地测试感兴趣的假设,并在小型样本情况下提高其性能。在这项研究中,我们评估了一些非参数方法的性能,更重要的是,我们比较他们的权力。具体地,我们检查三种置换方法(约束同步排列,不受约束的同步排列和WALD型置换测试),基于秩的方法(对齐等级变换)和参数方法(ANOVA型测试)。在模拟中,我们生成具有不同配置的数据集,错误的错误,方差,因子的效果和复制数量。目的是引发实际建议和指南,即在各种配置中对测试的敏感性,一些测试不能使用的条件,电力和I型错误之间的权衡,以及一个主要电源的偏差因子分析由于其他因素的影响。来自工业工程实验的数据集用于热成型包装生产的实验用于说明各种分析方法的应用,考虑到实验目的的目的建议的试验的力量。

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