Confidence Intervals for High-Dimensional Partially Linear Single-Index Models

Thomas Gueuning, G. Claeskens
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引用次数: 8

Abstract

We study partially linear single-index models where both model parts may contain high-dimensional variables. While the single-index part is of fixed dimension, the dimension of the linear part is allowed to grow with the sample size. Due to the addition of penalty terms to the loss function in order to provide sparse estimators, such as obtained by lasso or smoothly clipped absolute deviation, the construction of confidence intervals for the model parameters is not as straightforward as in the classical low-dimensional data framework. By adding a correction term to the penalized estimator a desparsified estimator is obtained for which asymptotic normality is proven. We study the construction of confidence intervals and hypothesis tests for such models. The simulation results show that the method performs well for high-dimensional single-index models.
高维部分线性单指标模型的置信区间
我们研究了部分线性单指标模型,其中两个模型部分都可能包含高维变量。单指标部分的尺寸是固定的,而线性部分的尺寸允许随样本量的增大而增大。由于在损失函数中加入惩罚项以提供稀疏估计,例如通过lasso或平滑裁剪绝对偏差获得,因此模型参数置信区间的构建不像经典低维数据框架中那样简单。通过在惩罚估计量上增加一个校正项,得到了一个证明渐近正态性的非稀疏估计量。我们研究了这类模型的置信区间的构造和假设检验。仿真结果表明,该方法对高维单指标模型具有良好的性能。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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