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Penalized expectile regression: an alternative to penalized quantile regression

机译:惩罚的预期回归:罚款罚款的替代品

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This paper concerns the study of the entire conditional distribution of a response given predictors in a heterogeneous regression setting. A common approach to address heterogeneous data is quantile regression, which utilizes the minimization of the L1 norm. As an alternative to quantile regression, we consider expectile regression, which relies on the minimization of the asymmetric L2 norm and detects heteroscedasticity effectively. We assume that only a small set of predictors is relevant to the response and develop penalized expectile regression with SCAD and adaptive LASSO penalties. With properly chosen tuning parameters, we show that the proposed estimators display oracle properties. A numerical study using simulated and real examples demonstrates the competitive performance of the proposed penalized expectile regression, and its combined use with penalized quantile regression would be helpful and recommended for practitioners.
机译:本文涉及在异构回归设置中给出响应的整个条件分布的研究。 解决异构数据的常见方法是量子回归,其利用L1标准的最小化。 作为定量回归的替代方案,我们考虑预期回归,这依赖于不对称L2规范的最小化并有效地检测异源性。 我们假设只有一小部分预测因素与响应相关,并制定与苏尔邦和适应套索惩罚的惩罚延期回归。 通过正确选择的调整参数,我们显示所提出的估计器显示Oracle属性。 使用模拟和实际示例的数值研究表明,拟议的罚款延期回归的竞争性能,其与惩罚的大分回归的结合使用将有用,并建议为从业者。

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