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Valid Post-Selection Inference in High-Dimensional Approximately Sparse Quantile Regression Models

机译:在高维大致稀疏量子回归模型中有效的选择后选择推断

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摘要

This work proposes new inference methods for a regression coefficient of interest in a (heterogenous) quantile regression model. We consider a high-dimensional model where the number of regressors potentially exceeds the sample size but a subset of them suffices to construct a reasonable approximation to the conditional quantile function. The proposed methods are (explicitly or implicitly) based on orthogonal score functions that protect against moderate model selection mistakes, which are often inevitable in the approximately sparse model considered in the present article. We establish the uniform validity of the proposed confidence regions for the quantile regression coefficient. Importantly, these methods directly apply to more than one variable and a continuum of quantile indices. In addition, the performance of the proposed methods is illustrated through Monte Carlo experiments and an empirical example, dealing with risk factors in childhood malnutrition. Supplementary materials for this article are available online.
机译:该工作提出了在(异构)分位数回归模型中的回归系数的新推断方法。我们考虑一种高维模型,其中回归量的数量可能超过样本大小,但它们的子集足以构造与条件定位函数的合理近似。所提出的方法(明确或隐含地)基于正交的分数函数,该函数可防止用于中等模型选择错误,这在本文中考虑的大致稀疏模型中通常是不可避免的。我们建立了大分回归系数的提出置信区的统一有效性。重要的是,这些方法直接适用于一个以上的变量和平分数的连续线。此外,通过Monte Carlo实验和实证例子说明了所提出的方法的性能,处理儿童营养不良的危险因素。本文的补充材料在线提供。

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