Thanks to its favorable properties, the multivariate normal distribution is still largely employed for modeling phenomena in various scientific fields. However, when the number of components $p$ is of the same asymptotic order as the sample size $n$, standard inferential techniques are generally inadequate to conduct hypothesis testing on the mean vector and/or the covariance matrix. Within several prominent frameworks, we propose then to draw reliable conclusions via a directional test. We show that under the null hypothesis the directional $p$-value is exactly uniformly distributed even when $p$ is of the same order of $n$, provided that conditions for the existence of the maximum likelihood estimate for the normal model are satisfied. Extensive simulation results confirm the theoretical findings across different values of $p/n$, and show that under the null hypothesis the directional test outperforms not only the usual first and higher-order finite-$p$ solutions but also alternative methods tailored for high-dimensional settings. Simulation results also indicate that the power performance of the different tests depends on the specific alternative hypothesis.
翻译:由于其有利的特性,多变量正常分布在很大程度上仍然用于在各种科学领域模拟现象;然而,如果成分数量与样本大小相同,美元与美元相同,标准推断技术一般不足以对平均矢量和/或共变矩阵进行假设测试。在若干突出的框架内,我们提议通过方向测试得出可靠的结论。我们表明,在无效假设下,方向值$p$-价值的分布完全一致,即使美元为美元,只要满足正常模型存在最大可能性估计数的条件。广泛的模拟结果证实了不同值的理论结论,显示在无效假设下,方向测试不仅不符合通常的一级和较高一级定额美元的解决办法,而且不符合适合高度环境的替代方法。模拟结果还表明,不同测试的功率性取决于具体的替代假设。