Nonparametric tests for equality of multivariate distributions are frequently desired in research.It is commonly required that test-procedures based on relatively small samples of vectors accurately control the corresponding Type I Error (TIE) rates. Often, in the multivariate testing, extensions of null-distribution-free univariate methods, e.g., Kolmogorov-Smirnov and Cramer-von Mises type schemes, are not exact, since their null distributions depend on underlying data distributions. The present paper extends the density-based empirical likelihood technique in order to nonparametrically approximate the most powerful test for the multivariate two-sample (MTS) problem, yielding an exact finite-sample test statistic. We rigorously establish and apply one-to-one-mapping between the equality of vectors distributions and the equality of distributions of relevant univariate linear projections. In this framework, we prove an algorithm that simplifies the use of projection pursuit, employing only a few of the infinitely many linear combinations of observed vectors components. The displayed distribution-free strategy is employed in retrospective and group sequential manners. The asymptotic consistency of the proposed technique is shown. Monte Carlo studies demonstrate that the proposed procedures exhibit extremely high and stable power characteristics across a variety of settings. Supplementary materials for this article are available online.
翻译:通常需要基于相对较小的矢量样本的测试程序来准确控制相应的I型错误(TIE)率。通常,在多变量测试中,无零分配无异分布单体型方法的扩展,例如Kolmogorov-Smirnov和Cramer-von Mises类型方法的分布不精确,因为它们的分布不取决于基本数据分布。本文扩展基于密度的经验可能性技术,以便不以不具有最强的参数来估计多变量双模(MTS)问题,产生精确的有限缩略图测试统计。我们严格建立并应用一对一的无异分布无异异异方法,例如Kolmogorov-Smirnov和Cramer-von Mises类型方法的分布不精确。在这个框架中,我们证明一种算法可以简化预测跟踪的用途,只使用观测到的矢量成的无限线性组合,以便不以最强的线性组合进行测试,从而产生精确的限定性标定的缩度测试。 展示的分布型战略在高水平上展示。 展示的是,这是一个可追溯式的排序式战略。