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A robust diagnostic plot for explanatory variables under model mis-specification

机译:模型错误指定下用于解释变量的鲁棒诊断图

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摘要

A typical added variable plot is a commonly used plot in assessing the accuracy of a normal linear model. This plot is often used to evaluate the effect of adding an explanatory variable into the model and to detect possibly high leverage points or influential observations on the added variable. However, this type of plot is generally in doubt, once the normal distributional assumptions are violated. In this article, we extend the robust likelihood technique introduced by Roy all and Tsou [11] to propose a robust added variable plot. The validity of this diagnostic plot requires no knowledge of the true underlying distributions so long as their second moments exist. The usefulness of the robust graphical approach is demonstrated through a few illustrations and simulations.
机译:典型的添加变量图是评估正常线性模型的准确性时常用的图。该图通常用于评估将解释变量添加到模型中的效果,并检测可能的高杠杆点或对添加变量的影响性观察。但是,一旦违反了正态分布假设,这种图通常就会受到质疑。在本文中,我们扩展了Roy all和Tsou [11]引入的鲁棒似然技术,以提出鲁棒的添加变量图。只要存在第二时刻,该诊断图的有效性就不需要知道真实的基础分布。鲁棒的图形方法的有用性通过一些插图和仿真得到了证明。

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