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Non-parametric MANOVA approaches for non-normal multivariate outcomes with missing values

机译:具有缺失值的非正常多元结果的非参数MANOVA方法

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摘要

Between-group comparisons often entail many correlated response variables. The multivariate linear model, with its assumption of multivariate normality, is the accepted standard tool for these tests. When this assumption is violated, the non-parametric multivariate Kruskal-Wallis (MKW) test is frequently used. However, this test requires complete cases with no missing values in response variables. Deletion of cases with missing values likely leads to inefficient statistical inference. Here we extend the MKW test to retain information from partially observed cases. Results of simulated studies and analysis of real data show that the proposed method provides adequate coverage and superior power to complete case analyses.
机译:组间比较通常需要许多相关的响应变量。假设多元正态性的多元线性模型是这些测试的公认标准工具。当违反此假设时,经常使用非参数多元Kruskal-Wallis(MKW)检验。但是,此测试需要完整的案例,且响应变量中不得缺少任何值。删除缺少值的案例可能会导致无效的统计推断。在这里,我们扩展了MKW测试,以保留部分观察到的案例的信息。模拟研究和实际数据分析的结果表明,该方法提供了足够的覆盖范围和强大的功能来完成案例分析。

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