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Robust Adaptive Lasso method for parameter’s estimation and variable selection in high-dimensional sparse models

机译:用于高维稀疏模型中参数估计和变量选择的鲁棒自适应套索方法

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摘要

High dimensional data are commonly encountered in various scientific fields and pose great challenges to modern statistical analysis. To address this issue different penalized regression procedures have been introduced in the litrature, but these methods cannot cope with the problem of outliers and leverage points in the heavy tailed high dimensional data. For this purppose, a new Robust Adaptive Lasso (RAL) method is proposed which is based on pearson residuals weighting scheme. The weight function determines the compatibility of each observations and downweight it if they are inconsistent with the assumed model. It is observed that RAL estimator can correctly select the covariates with non-zero coefficients and can estimate parameters, simultaneously, not only in the presence of influential observations, but also in the presence of high multicolliearity. We also discuss the model selection oracle property and the asymptotic normality of the RAL. Simulations findings and real data examples also demonstrate the better performance of the proposed penalized regression approach.
机译:高维数据通常在各个科学领域中遇到,对现代统计分析提出了巨大挑战。为了解决这个问题,文献中引入了不同的惩罚回归程序,但是这些方法无法解决高尾部高维数据中的离群值和杠杆点问题。为此,基于皮尔逊残差加权方案,提出了一种新的鲁棒自适应套索(RAL)方法。权重函数确定每个观测值的兼容性,如果它们与假设的模型不一致,则降低其权重。可以看出,RAL估计器可以正确地选择具有非零系数的协变量,并且可以同时估计参数,不仅在有影响力的观察结果存在时,而且在高多重评价的情况下。我们还讨论了模型选择的oracle属性和RAL的渐近正态性。仿真结果和真实数据示例也证明了所提出的惩罚回归方法的更好性能。

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