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Robust estimation and variable selection in heteroscedastic linear regression

机译:异方差线性回归中的稳健估计和变量选择

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摘要

The paper concerns robust estimation and variable selection in heteroscedastic linear regression models. After a brief review of existing methods for estimation in such models, a robust S-estimation approach is discussed. For all methods concise descriptions of algorithms are provided. Little is available upon robust variable selection methods for heteroscedastic linear models. The paper gives essential contributions in the area of simultaneous robust estimation and variable selection, relying on basics of the nonnegative garrote method which has been proven to have very good practical as well as theoretical properties in the homoscedastic linear model context. Several numerical examples, simulations and analysis of real data, demonstrate the performances and practical use of the discussed methods. Moreover, we provide expressions for the influence functions of the estimators of the mean and the error variance parameters. Influence functions are plotted in a simple setting providing insights in the sensitivity of the estimators for a single outlying observation.
机译:本文涉及异方差线性回归模型中的鲁棒估计和变量选择。在简要回顾了此类模型中现有的估算方法之后,讨论了一种健壮的S估算方法。对于所有方法,都提供了算法的简要说明。对于异方差线性模型,鲁棒的变量选择方法几乎没有。本文基于非负Garrote方法的基础,在同时鲁棒估计和变量选择领域做出了重要贡献,事实证明,该方法在同调线性模型的背景下具有很好的实用性和理论性。几个数值示例,真实数据的仿真和分析证明了所讨论方法的性能和实际使用。此外,我们提供了均值和误差方差参数的估计量的影响函数的表达式。在一个简单的设置中绘制影响函数,以提供有关单个偏远观测值的估计量敏感性的见解。

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