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首页> 外文期刊>Journal of the American statistical association >Targeted Inference Involving High-Dimensional Data Using Nuisance Penalized Regression
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Targeted Inference Involving High-Dimensional Data Using Nuisance Penalized Regression

机译:有针对性推断涉及使用滋扰惩罚回归的高维数据

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Analysis of high-dimensional data has received considerable and increasing attention in statistics. In practice, we may not be interested in every variable that is observed. Instead, often some of the variables are of particular interest, and the remaining variables are nuisance. To this end, we propose the nuisance penalized regression which does not penalize the parameters of interest. When the coherence between interest parameters and nuisance parameters is negligible, we show that resulting estimator can be directly used for inference without any correction. When the coherence is not negligible, we propose an iterative procedure to further refine the estimate of interest parameters, based on which we propose a modified profile likelihood based statistic for hypothesis testing. The utilities of our general results are demonstrated in three specific examples. Numerical studies lend further support to our method.
机译:高维数据分析已得到相当大的统计数据的关注。 在实践中,我们可能对观察到的每个变量都不感兴趣。 相反,通常一些变量通常特别感兴趣,并且剩余的变量是滋扰。 为此,我们提出了损害罚款回归,这不会惩罚感兴趣的参数。 当感兴趣参数和滋扰参数之间的相干性可以忽略不计时,我们表明所产生的估计器可以直接用于推理而无需任何校正。 当一致性不可忽略时,我们提出了一种迭代程序,以进一步优化利息参数的估计,基于我们提出了基于修改的概况基于假设检验的统计数据。 我们一般结果的公用事业在三个具体例子中证明。 数值研究借给我们的方法提供了进一步支持。

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