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Multivariate analysis of covariance with potentially singular covariance matrices and non-normal responses

机译:具有潜在奇异协方差矩阵的协方差与非正常反应的多变量分析

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In applied research, it is often sensible to account for one or several covariates when testing for differences between multivariate means of several groups. However, the "classical'' parametric multivariate analysis of covariance (MANCOVA) tests (e.g., Wilks' Lambda) are based on quite restrictive assumptions (homoscedasticity and normality of the errors), which might be difficult to justify. Furthermore, existing potential remedies (e.g., heteroskedasticity-robust approaches) become inappropriate in cases where the covariance matrices are singular or close to singular. Nevertheless, such scenarios are frequently encountered in the life sciences and other fields, when, for example, in the context of standardized assessments, a summary performance measure as well as its corresponding subscales are analyzed. Moreover, computational issues may also lead to singular covariance structures. In the present manuscript, we consider a general MANCOVA model, allowing for potentially heteroskedastic and even singular covariance matrices as well as non-normal errors. We combine heteroskedasticity-consistent covariance matrix estimation methods with our proposed modified MANCOVA ANOVA-type statistic (MANCATS) and apply two different bootstrap approaches. We provide the proofs of the asymptotic validity of the respective testing procedures as well as the results from an extensive simulation study, which indicate that especially the parametric bootstrap version of the MANCATS outperforms its competitors in most small-sample scenarios, both in terms of type I error rates and power. These considerations are further illustrated and substantiated by examining real-life data from standardized achievement tests. Yet, for large sample sizes, Wald-type approaches are an attractive alternative option. Moreover, the choice between Wald-type and MANCATS-based tests might depend on the particular setting (e.g., the covariance structure, or the alternative under consideration). (C) 2020 Elsevier Inc. All rights reserved.
机译:在应用研究中,在测试几个组多变量手段之间的差异时,通常是明智的。然而,“古典”的协方差参数多变量分析(例如,Wilk'Lambda)基于相当长的假设(同性恋和误差的正常性),这可能难以证明。此外,现有的潜在补救措施(例如,异源性性 - 稳健的方法在协方差矩阵是单数或接近奇异的情况下变得不恰当。然而,在生命科学和其他领域经常遇到这种情况,例如,在标准化评估的上下文中,分析了摘要性能措施以及其相应的分量。此外,计算问题也可能导致奇异的协方差结构。在目前的稿件中,我们考虑一般的Mancova模型,允许潜在的异源性和偶数协方差矩阵以及非奇异的协方差矩阵以及非 - orormal错误。我们将异源性娱乐性 - 一致的协方差矩阵估计方法与我们相结合提出了修改的Mancova Anova型统计(Mancats)并应用两种不同的引导方法。我们提供各自测试程序的渐近有效性的证据以及广泛的仿真研究结果表明,尤其是Mancats的参数自动制引导版本在类型方面的大多数小型样本方案中优于竞争对手。我错误率和电源。通过检查标准化成就测试的现实生活数据进一步说明和证实这些考虑因素。然而,对于大型样本尺寸,Wald型方法是有吸引力的替代选择。此外,沃尔德型和基于甘露的测试之间的选择可能取决于特定的设置(例如,协方差结构或所考虑的替代方案)。 (c)2020 Elsevier Inc.保留所有权利。

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