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首页> 外文期刊>The Annals of Statistics: An Official Journal of the Institute of Mathematical Statistics >TEST FOR HIGH-DIMENSIONAL REGRESSION COEFFICIENTS USING REFITTED CROSS-VALIDATION VARIANCE ESTIMATION
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TEST FOR HIGH-DIMENSIONAL REGRESSION COEFFICIENTS USING REFITTED CROSS-VALIDATION VARIANCE ESTIMATION

机译:使用完整的交叉验证方差估计测试高维回归系数

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摘要

Testing a hypothesis for high-dimensional regression coefficients is of fundamental importance in the statistical theory and applications. In this paper, we develop a new test for the overall significance of coefficients in high-dimensional linear regression models based on an estimated U-statistics of order two. With the aid of the martingale central limit theorem, we prove that the asymptotic distributions of the proposed test are normal under two different distribution assumptions. Refitted cross-validation (RCV) variance estimation is utilized to avoid the overestimation of the variance and enhance the empirical power. We examine the finite-sample performances of the proposed test via Monte Carlo simulations, which show that the new test based on the RCV estimator achieves higher powers, especially for the sparse cases. We also demonstrate an application by an empirical analysis of a microarray data set on Yorkshire gilts.
机译:检验高维回归系数的假设在统计理论和应用中具有根本重要性。在本文中,我们开发了一种基于二阶估计U统计量的高维线性回归模型中系数总体显著性的新检验方法。借助鞅中心极限定理,我们证明了在两种不同的分布假设下,该检验的渐近分布是正态的。采用修正交叉验证(RCV)方差估计,避免了对方差的高估,增强了实证能力。我们通过蒙特卡罗模拟检验了该测试的有限样本性能,结果表明,基于RCV估计的新测试可以获得更高的性能,尤其是在稀疏情况下。我们还通过对约克郡母猪的微阵列数据集进行实证分析来展示其应用。

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