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Penalized robust estimators in sparse logistic regression

机译:稀疏逻辑回归中的惩罚稳健估计器

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摘要

Abstract Sparse covariates are frequent in classification and regression problems where the task of variable selection is usually of interest. As it is well known, sparse statistical models correspond to situations where there are only a small number of nonzero parameters, and for that reason, they are much easier to interpret than dense ones. In this paper, we focus on the logistic regression model and our aim is to address robust and penalized estimation for the regression parameter. We introduce a family of penalized weighted M-type estimators for the logistic regression parameter that are stable against atypical data. We explore different penalization functions including the so-called Sign penalty. We provide a careful analysis of the estimators convergence rates as well as their variable selection capability and asymptotic distribution for fixed and random penalties. A robust cross-validation criterion is also proposed. Through a numerical study, we compare the finite sample performance of the classical and robust penalized estimators, under different contamination scenarios. The analysis of real datasets enables to investigate the stability of the penalized estimators in the presence of outliers.
机译:摘要 稀疏协变量在分类和回归问题中很常见,其中变量选择的任务通常是感兴趣的。众所周知,稀疏统计模型对应于只有少量非零参数的情况,因此,它们比密集参数更容易解释。在本文中,我们重点关注逻辑回归模型,我们的目标是解决回归参数的稳健和惩罚估计。我们为逻辑回归参数引入了一系列惩罚加权 M 型估计器,这些估计器对非典型数据是稳定的。我们探索了不同的惩罚功能,包括所谓的符号惩罚。我们仔细分析了估计器的收敛率,以及它们的变量选择能力和固定和随机惩罚的渐近分布。还提出了一个稳健的交叉验证标准。通过数值研究,我们比较了不同污染情景下经典和鲁棒惩罚估计器的有限样本性能。通过对真实数据集的分析,可以研究存在异常值时受惩罚估计量的稳定性。

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