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Ultrahigh dimensional variable selection through the penalized maximum trimmed likelihood estimator

机译:通过惩罚最大修整似然估计器进行超高维变量选择

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摘要

The penalized maximum likelihood estimator (PMLE) has been widely used for variable selection in high-dimensional data. Various penalty functions have been employed for this purpose, e.g., Lasso, weighted Lasso, or smoothly clipped absolute deviations. However, the PMLE can be very sensitive to outliers in the data, especially to outliers in the covariates (leverage points). In order to overcome this disadvantage, the usage of the penalized maximum trimmed likelihood estimator (PMTLE) is proposed to estimate the unknown parameters in a robust way. The computation of the PMTLE takes advantage of the same technology as used for PMLE but here the estimation is based on subsamples only. The breakdown point properties of the PMTLE are discussed using the notion of d-fullness. The performance of the proposed estimator is evaluated in a simulation study for the classical multiple linear and Poisson linear regression models.
机译:惩罚最大似然估计器(PMLE)已被广泛用于高维数据的变量选择。为此目的已经采用了各种惩罚函数,例如套索,加权套索或平滑限幅的绝对偏差。但是,PMLE对数据中的异常值非常敏感,尤其是对协变量中的异常值(杠杆点)。为了克服该缺点,提出了使用惩罚最大修整似然估计器(PMTLE)以鲁棒的方式估计未知参数。 PMTLE的计算利用了与PMLE相同的技术,但是这里的估计仅基于子样本。使用d-满度概念讨论了PMTLE的击穿点属性。在针对经典多元线性和Poisson线性回归模型的仿真研究中评估了所提出估计量的性能。

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