To sufficiently exploit the model structure under the null hypothesis such that the conditions on the whole model can be mild, this paper investigates score function-based tests to check the significance of an ultrahigh-dimensional sub-vector of the model coefficients when the nuisance parameter vector is also ultrahigh-dimensional in linear models. We first reanalyze and extend a recently proposed score function-based test to derive, under weaker conditions, its limiting distributions under the null and local alternative hypotheses. As it may fail to work when the correlation between testing covariates and nuisance covariates is high, we propose an orthogonalized score function-based test with two merits: debiasing to make the non-degenerate error term degenerate and reducing the asymptotic variance to enhance the power performance. Simulations evaluate the finite-sample performances of the proposed tests, and a real data analysis illustrates its application.
翻译:为了充分利用无效假设下的模型结构,使整个模型的条件温和,本文件调查基于评分函数的测试,以检查模型系数的超高维子矢量在线性模型中也是超高维时的重要性。我们首先重新分析并推广最近提出的基于评分函数的测试,以便在较弱的条件下,在无效和当地替代假设下得出其有限的分布。由于在测试共变数和扰动共变数之间的相关性很高时,它可能无法发挥作用,因此我们建议采用基于分数函数的正向分值测试,其两个优点是:使非变性误差术语退化,并减少非遗传性差异,以提高功率。模拟评估拟议测试的有限抽样性能,并进行真实的数据分析,以说明其应用情况。