The problem of testing the equality of mean vectors for high-dimensional data has been intensively investigated in the literature. However, most of the existing tests impose strong assumptions on the underlying group covariance matrices which may not be satisfied or hardly be checked in practice. In this article, an F-type test for two-sample Behrens--Fisher problems for high-dimensional data is proposed and studied. When the two samples are normally distributed and when the null hypothesis is valid, the proposed F-type test statistic is shown to be an F-type mixture, a ratio of two independent chi-square-type mixtures. Under some regularity conditions and the null hypothesis, it is shown that the proposed F-type test statistic and the above F-type mixture have the same normal and non-normal limits. It is then justified to approximate the null distribution of the proposed F-type test statistic by that of the F-type mixture, resulting in the so-called normal reference F-type test. Since the F-type mixture is a ratio of two independent chi-square-type mixtures, we employ the Welch--Satterthwaite chi-square-approximation to the distributions of the numerator and the denominator of the F-type mixture respectively, resulting in an approximation F-distribution whose degrees of freedom can be consistently estimated from the data. The asymptotic power of the proposed F-type test is established. Two simulation studies are conducted and they show that in terms of size control, the proposed F-type test outperforms two existing competitors. The proposed F-type test is also illustrated by a real data example.
翻译:在文献中,已经深入地调查了测试高维数据平均矢量是否相等的问题。然而,大多数现有测试都对基本组群变量矩阵提出了强烈的假设,这些假设可能无法满足,或实际上很难检查。在本篇文章中,提议并研究了用于高维数据的双 sample Behrens-Fisher 问题的F型测试。当两个样本通常分布时,当无效假设有效时,拟议的F型测试统计显示为F型混合物,一种F型混合物,一种是两种独立的chi-qure型混合物,一种是两种独立的chi-qure-ty型混合物。在某些常规条件和空假设下,显示拟议的F型测试统计和上述F型混合物具有相同的正常和非正常的限值。然后,可以将拟议的F型测试的任意分布率与F型混合物相近,因为F型混合物是两种独立的chirper-qure型混合物,我们使用Welch-Shape-Shape-Serview测试标准,结果Fral-slistria-ex 的Fral-stal tyal-stal exal exal exaltractionaltraction Staltraction Stal-stal-stal-stal-stal-stal-staltraction exal-stal-stal ex ex exal exal-stal ex ex ex ex ex ex ex ex ex ex exstrutututututismlutututus exal ex ex exal-sal exal-xaltraction exal ex ex ex ex ex ex ex exal ex exal-sal-sal exal exal exal exal exal exal exal exal exal ex exal exal exal exal exal exal exal exal exal ex exal exal exal exal exal exal exal exal ex ex ex exal exal exal exal exal exal exal exal exal exal ex