This paper studies model checking for general parametric regression models with no dimension reduction structure on the high-dimensional vector of predictors. Using existing test as an initial test, this paper combines the sample-splitting technique and conditional studentization approach to construct a COnditionally Studentized Test(COST). Unlike existing tests, whether the initial test is global or local smoothing-based, and whether the dimension of the predictor vector and the number of parameters are fixed, or diverge at a certain rate as the sample size goes to infinity, the proposed test always has a normal weak limit under the null hypothesis. Further, the test can detect the local alternatives distinct from the null hypothesis at the fastest possible rate of convergence in hypothesis testing. We also discuss the optimal sample splitting in power performance. The numerical studies offer information on its merits and limitations in finite sample cases. As a generic methodology, it could be applied to other testing problems.
翻译:本文以现有试验为初步试验,将样本分离技术和有条件的学习方法结合起来,以构建一个Conditionalized Test(COST) 。 与现有的试验不同,初步试验是全球性还是局部性平滑,预测矢量的尺寸和参数数目是否固定,还是随着样品大小达到无限程度而以一定速度出现差异,拟议的试验在无效假设下总是有正常的弱度限制。此外,试验还可以以假设试验中尽可能最快的一致速度探测与无效假设不同的当地替代物。我们还讨论最佳样品分解功能的情况。数字研究提供了关于其优点和有限抽样案例的局限性的信息。作为一种通用方法,它可以适用于其他试验问题。</s>