Liu Wanjun, Yu Xiufan, Zhong Wei, Li Runze
LinkedIn Corporation.
University of Notre Dame.
J Am Stat Assoc. 2024;119(545):744-756. doi: 10.1080/01621459.2022.2142592. Epub 2022 Dec 12.
This paper studies the projection test for high-dimensional mean vectors via optimal projection. The idea of projection test is to project high-dimensional data onto a space of low dimension such that traditional methods can be applied. We first propose a new estimation for the optimal projection direction by solving a constrained and regularized quadratic programming. Then two tests are constructed using the estimated optimal projection direction. The first one is based on a data-splitting procedure, which achieves an exact -test under normality assumption. To mitigate the power loss due to data-splitting, we further propose an online framework, which iteratively updates the estimation of projection direction when new observations arrive. We show that this online-style projection test asymptotically converges to the standard normal distribution. Various simulation studies as well as a real data example show that the proposed online-style projection test retains the type I error rate well and is more powerful than other existing tests.
本文研究了通过最优投影对高维均值向量进行的投影检验。投影检验的思想是将高维数据投影到低维空间,以便能够应用传统方法。我们首先通过求解一个约束正则化二次规划问题,提出了一种新的最优投影方向估计方法。然后,利用估计出的最优投影方向构建了两个检验。第一个检验基于数据分割过程,在正态性假设下实现了精确检验。为了减轻由于数据分割导致的功效损失,我们进一步提出了一个在线框架,当新的观测值到来时,该框架会迭代更新投影方向的估计。我们证明了这种在线式投影检验渐近收敛于标准正态分布。各种模拟研究以及一个实际数据示例表明,所提出的在线式投影检验能很好地保持第一类错误率,并且比其他现有检验更具功效。