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首页> 外文期刊>Annals of the Institute of Statistical Mathematics >Simultaneous estimation and variable selection in median regression using Lasso-type penalty
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Simultaneous estimation and variable selection in median regression using Lasso-type penalty

机译:使用Lasso型罚分的中位数回归同时估计和变量选择

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We consider the median regression with a LASSO-type penalty term for variable selection. With the fixed number of variables in regression model, a twostage method is proposed for simultaneous estimation and variable selection where the degree of penalty is adaptively chosen. A Bayesian information criterion type approach is proposed and used to obtain a data-driven procedure which is proved to automatically select asymptotically optimal tuning parameters. It is shown that the resultant estimator achieves the so-called oracle property. The combination of the median regression and LASSO penalty is computationally easy to implement via the standard linear programming.Arandom perturbation scheme can be made use of to get simple estimator of the standard error. Simulation studies are conducted to assess the finite-sample performance of the proposed method.We illustrate the methodology with a real example.
机译:我们考虑用LASSO型罚分项进行变量选择的中位数回归。在回归模型中变量数量固定的情况下,提出了一种同时估计和变量选择的两阶段方法,其中惩罚程度是自适应选择的。提出了一种贝叶斯信息准则类型方法,该方法用于获得数据驱动的程序,该程序被证明可以自动选择渐近最优的调节参数。结果表明,所得的估计量达到了所谓的oracle属性。通过标准线性规划,中值回归和LASSO罚分的组合在计算上很容易实现。可以使用随机扰动方案来简单估计标准误差。通过仿真研究来评估所提出方法的有限样本性能。

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