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首页> 外文期刊>Journal of Multivariate Analysis: An International Journal >Wild bootstrapping rank-based procedures: Multiple testing in nonparametric factorial repeated measures designs
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Wild bootstrapping rank-based procedures: Multiple testing in nonparametric factorial repeated measures designs

机译:基于级别的级别的程序:在非参数阶段中的多次测试重复测量设计

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摘要

Repeated measures designs are frequently used for planning experiments in the life or social sciences. Typical examples include the comparison of different treatments over time, where both factor levels may possess an additional structure. For such designs, the statistical analysis typically consists of several steps. If the global null is rejected, multiple comparisons are performed. Usually, general factorial repeated measures designs are inferred by classical linear mixed models. Common underlying assumptions, such as normality or variance homogeneity are, however, often not met in practice. Furthermore, when dealing with, e.g., ordinal or ordered categorical data, means are no longer meaningful to describe an effect and other effect sizes should be used. To this end, we developmultiple contrast tests for nonparametric treatment effects in general factorial repeated measures designs within this paper and equip them with a novel, asymptotically correct wild bootstrap approach. Because regulatory authorities require the calculation of confidence intervals, this work also provides simultaneous confidence intervals for linear contrasts and for the ratio of different contrasts in meaningful effects. Extensive simulations are conducted to foster the theoretical findings. Finally, the analysis of two datasets exemplify the applicability of the novel procedures. (C) 2018 Elsevier Inc. All rights reserved.
机译:重复措施设计经常用于人生或社会科学的规划实验。典型的实例包括随时间的不同处理的比较,其中两个因子水平可以具有额外的结构。对于这种设计,统计分析通常由几个步骤组成。如果全局空缺被拒绝,则执行多个比较。通常,通过经典的线性混合模型推断出一般阶乘重复测量设计。然而,常见的潜在假设,例如正常性或方差均匀性,通常在实践中常见。此外,在处理时,例如序数或有序的分类数据,意味着不再有意义地描述效果,并且应该使用其他效果大小。为此,我们在本文中的一般阶乘反复测量设计中为非参数治疗效果开发了非参数治疗效果的对比测试,并用新颖的渐近纠正野外自发方法装备了它们。由于监管机构需要计算置信区间,因此该工作还提供了线性对比度的同时置信区间,以及不同对比度的不同效果的比例。进行广泛的模拟以促进理论发现。最后,对两个数据集的分析举例说明了新颖程序的适用性。 (c)2018年Elsevier Inc.保留所有权利。

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