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Nonparametric MANOVA in meaningful effects

机译:非参数manova有意义的效果

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Multivariate analysis of variance (MANOVA) is a powerful and versatile method to infer and quantify main and interaction effects in metric multivariate multi-factor data. It is, however, neither robust against change in units nor meaningful for ordinal data. Thus, we propose a novel nonparametric MANOVA. Contrary to existing rank-based procedures, we infer hypotheses formulated in terms of meaningful Mann-Whitney-type effects in lieu of distribution functions. The tests are based on a quadratic form in multivariate rank effect estimators, and critical values are obtained by bootstrap techniques. The newly developed procedures provide asymptotically exact and consistent inference for general models such as the nonparametric Behrens-Fisher problem and multivariate one-, two-, and higher-way crossed layouts. Computer simulations in small samples confirm the reliability of the developed method for ordinal and metric data with covariance heterogeneity. Finally, an analysis of a real data example illustrates the applicability and correct interpretation of the results.
机译:多元差异(MANOVA)是一种强大而多功能的方法,可推断和量化度量多变量多因素数据中的主要和交互效应。然而,它既不稳健地对单位的变化也不有意义序数数据。因此,我们提出了一种新的非参数Manova。与现有的基于级别的程序相反,我们推断出在有意义的曼宁型效果方面制定的假设,以代替分发功能。测试基于多变量等级效果估计器中的二次形式,并且通过自动启动技术获得临界值。新开发的程序为诸如非参数Behrens-Fisher问题等一般模型提供了渐近精确和一致的推理,以及多变量,两种和更高的交叉布局。小型样本中的计算机模拟证实了具有协方差异质性的序数和度量数据的开发方法的可靠性。最后,对实际数据示例的分析说明了对结果的适用性和正确的解释。

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