Lix Lisa M, Keselman H J, Hinds Aynslie M
Department of Community Health Sciences, Faculty of Medicine, University of Manitoba, 408-727 McDermot Avenue, Winnipeg, Man., R3E 3P5, Canada.
Comput Methods Programs Biomed. 2005 Feb;77(2):129-39. doi: 10.1016/j.cmpb.2004.09.002.
Hotelling's T2 procedure is used to test the equality of means in two-group multivariate designs when covariances are homogeneous. A number of alternatives to T2, which are robust to covariance heterogeneity, have been proposed in the literature. However, all are sensitive to departures from multivariate normality. We demonstrate how to obtain multivariate tests that are robust to covariance heterogeneity and non-normality with estimators of location and scale based on trimming and Winsorizing. The performance of six alternatives to T2 was examined via Monte Carlo methods when characteristics of the research design, degree of covariance heterogeneity, and degree of non-normality were manipulated. We have recently developed a program written in the SAS/IML language that can be used to implement these robust multivariate tests. Recommendations are provided on the specific data-analytic conditions under which these tests should be adopted.
当协方差齐性时,Hotelling's T2 程序用于检验两组多变量设计中均值的相等性。文献中已经提出了许多对 T2 的替代方法,它们对协方差异质性具有稳健性。然而,所有这些方法对多元正态性的偏离都很敏感。我们展示了如何使用基于截尾和 Winsor 化的位置和尺度估计量来获得对协方差异质性和非正态性都具有稳健性的多元检验。当研究设计的特征、协方差异质性程度和非正态性程度被操纵时,通过蒙特卡罗方法检验了 T2 的六种替代方法的性能。我们最近用 SAS/IML 语言开发了一个程序,可用于实施这些稳健的多元检验。针对应采用这些检验的具体数据分析条件提供了建议。