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Estimation and variable selection for a class of quantile regression models with multiple index

机译:多种索引的一类分位数回归模型的估计和变量选择

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摘要

Quantile regression (QR) for a groupwise additive multiple-index models and its applications are investigated. We find that quantile regression can be used to recovery the directions of the index parameter vectors, and it does not involve the nonparametric treatment completely. Based on this useful finding, a iterative-free QR estimator for the partial linear single index model and a penalized QR for variable selection in the high dimensional sparse models are proposed respectively. Because of inheriting the superiorities of quantile regression, our methods are robust and comprehensive. Simulation studies and real data analysis are included to illustrate the finite sample performance.
机译:调查了GroupWise添加剂多索引模型及其应用的定量回归(QR)。我们发现量子回归可用于恢复索引参数向量的方向,并且它不会完全涉及非参数处理。基于这种有用的发现,提出了一种用于部分线性单索引模型的无迭代QR估计和用于高维稀疏模型中的可变选择的惩罚QR。由于继承了量化回归的优势,我们的方法是坚固且全面的。包括仿真研究和实际数据分析以说明有限的样本性能。

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