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Valid post-selection inference in high-dimensional approximately sparse quantile regression models

机译:高维近似稀疏分位数回归模型中的有效选择后推断

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摘要

This work proposes new inference methods for the estimation of a regression coefficient of interest in quantile regression models. We consider high-dimensional models where the number of regressors potentially exceeds the sample size but a subset of them suffice to construct a reasonable approximation of the unknown quantile regression function in the model. The proposed methods are protected against moderate model selection mistakes, which are often inevitable in the approximately sparse model considered here. The methods construct (implicitly or explicitly) an optimal instrument as a residual from a density-weighted projection of the regressor of interest on other regressors. Under regularity conditions, the proposed estimators of the quantile regression coefficient are asymptotically root-n normal, with variance equal to the semi-parametric efficiency bound of the partially linear quantile regression model. In addition, the performance of the technique is illustrated through Monte-carlo experiments and an empirical example, dealing with risk factors in childhood malnutrition. The numerical results confirm the theoretical findings that the proposed methods should outperform the naive post-model selection methods in non-parametric settings. Moreover, the empirical results demonstrate soundness of the proposed methods.
机译:这项工作提出了新的推断方法,用于估计分位数回归模型中的目标回归系数。我们考虑高维模型,其中回归变量的数量可能超过样本大小,但是其中的一个子集足以构建模型中未知分位数回归函数的合理近似值。所提出的方法可以防止出现中度模型选择错误,这在此处考虑的近似稀疏模型中通常是不可避免的。这些方法(隐式或显式)构造了一个最优工具,作为对目标回归变量在其他回归变量上的密度加权投影的残差。在规则性条件下,分位数回归系数的估计估计量是渐近根n正态的,方差等于部分线性分位数回归模型的半参数效率范围。此外,该技术的性能通过蒙特卡洛实验和一个处理儿童营养不良风险因素的经验例子进行了说明。数值结果证实了理论发现,即在非参数设置中,所提出的方法应优于单纯的模型后选择方法。此外,经验结果证明了所提出方法的正确性。

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