首页> 外文期刊>The Annals of Statistics: An Official Journal of the Institute of Mathematical Statistics >RATES OF CONVERGENCE OF THE ADAPTIVE LASSO ESTIMATORS TO THE ORACLE DISTRIBUTION AND HIGHER ORDER REFINEMENTS BY THE BOOTSTRAP
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RATES OF CONVERGENCE OF THE ADAPTIVE LASSO ESTIMATORS TO THE ORACLE DISTRIBUTION AND HIGHER ORDER REFINEMENTS BY THE BOOTSTRAP

机译:自适应激光估算器对甲骨文的甲骨分布和高阶精细化的收敛速度

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摘要

Zou [J. Amer. Statist. Assoc. 101 (2006) 1418-1429] proposed the Adaptive LASSO (ALASSO) method for simultaneous variable selection and estimation of the regression parameters, and established its oracle property. In this paper, we investigate the rate of convergence of the ALASSO estimator to the oracle distribution when the dimension of the regression parameters may grow to infinity with the sample size. It is shown that the rate critically depends on the choices of the penalty parameter and the initial estimator, among other factors, and that confidence intervals (CIs) based on the oracle limit law often have poor coverage accuracy. As an alternative, we consider the residual bootstrap method for the ALASSO estimators that has been recently shown to be consistent; cf. Chatterjee and Lahiri [J. Amer. Statist. Assoc. 106 (2011a) 608-625]. We show that the bootstrap applied to a suitable studentized version of the ALASSO estimator achieves second-order correctness, even when the dimension of the regression parameters is unbounded. Results from a moderately large simulation study show marked improvement in coverage accuracy for the bootstrap CIs over the oracle based CIs.
机译:邹[J.阿米尔。统计员。副会长101(2006)1418-1429]提出了用于同时变量选择和估计回归参数的自适应LASSO(ALASSO)方法,并建立了其oracle属性。在本文中,当回归参数的维数可能随样本大小增长到无穷大时,我们研究了ALASSO估计量对oracle分布的收敛速度。结果表明,速率主要取决于惩罚参数和初始估计量的选择,以及其他因素,并且基于预言极限法则的置信区间(CI)通常具有较差的覆盖范围。作为替代方案,我们考虑了最近被证明是一致的ALASSO估计量的剩余自举方法。 cf.查特吉和拉希里[J.阿米尔。统计员。副会长106(2011a)608-625]。我们表明,即使回归参数的大小不受限制,适用于ALASSO估计器的合适学生化版本的引导程序也可以实现二阶正确性。中等规模的模拟研究的结果表明,自举配置项的覆盖范围准确性比基于Oracle的配置项显着提高。

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