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Penalized Single-Index Quantile Regression

机译:惩罚单索·分位数回归

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The single-index (SI) regression and single-index quantile (SIQ) estimation? methods product linear combinations of? all the original predictors. However, it is possible that there are many unimportant predictors within the original predictors. Thus, the precision of parameter estimation as well as the accuracy of prediction will be effected by the existence of those unimportant predictors when the previous methods are used.In this article, an extension of the SIQ method of Wu et al. (2010) has been proposed, which considers Lasso and Adaptive Lasso for estimation and variable selection. Computational algorithms have been developed in order to calculate the penalized SIQ estimates. A simulation study and a real data application have been used to assess the performance of the methods under consideration.
机译:单索引(SI)回归和单索分位数(SIQ)估计? 方法产品线性组合吗? 所有原始的预测因子。 然而,原始预测器中有许多不重要的预测因子。 因此,参数估计的精度以及预测的准确性将通过在使用先前的方法时存在于这些不重要的预测器。在本文中,Wu等人的SIQ方法的扩展。 (2010)已提出,其中考虑了套索和自适应套索进行估计和变量选择。 已经开发了计算算法,以便计算惩罚的SIQ估计。 模拟研究和实际数据应用已被用于评估所考虑的方法的性能。

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