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FORMULATING ROBUST REGRESSION ESTIMATION AS AN OPTIMUM ALLOCATION PROBLEM

机译:将鲁棒回归估计作为最佳分配问题

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The Mallows-type estimator, one of the most reasonable bounded influence estimators, often downweights leverage points regardless of the magnitude of the corresponding residual, and this could imply a loss of efficiency. In this article, we consider whether the efficiency of this bounded influence estimator could be improved by regarding both the robust x-distance and the residual size. We develop a new robust procedure based on the ideas of the Mallows-type estimator and the general robust recipe, where data been cleaned by pulling outliers towards their fitted values. Our basic idea is to formulate the robust estimation as an allocation problem, where the objective function is a Huber-type "loss" function, but the pulling resource is restricted. Using a mathematical programming technique, the pulling resource is optimally allocated to influential points (x_i, y_i) with respect to residual size and given weights, w(x_i). Three previously published approaches are compared to our proposal via simulated experiments. In the case of contaminated data by regression outliers and "good" leverage points, the proposed robust estimator is a reasonable bounded influence estimator concerning both efficiency and norm of bias. In addition, the proposed approach offers the potential to establish constraints for the regression parameters and also may potentially provide insight regarding outlier detection.
机译:Mallows型估计器是最合理的有界影响估计器之一,通常会降低权重点,而不考虑相应残差的大小,这可能意味着效率降低。在本文中,我们考虑是否可以通过同时考虑鲁棒的x距离和残差大小来提高此有界影响估计量的效率。我们基于Mallows型估计器和一般鲁棒配方的思想开发了一种新的鲁棒程序,其中通过将异常值拉至其拟合值来清理数据。我们的基本思想是将鲁棒估计公式化为分配问题,其中目标函数是Huber型“损失”函数,但拉动资源受到限制。使用数学编程技术,相对于剩余大小和给定权重w(x_i),将拉动资源最佳地分配给影响点(x_i,y_i)。通过模拟实验将三种以前发布的方法与我们的建议进行了比较。在回归数据和“良好”杠杆点污染数据的情况下,建议的鲁棒估计量是关于效率和偏差范数的合理的有界影响估计量。另外,所提出的方法提供了建立回归参数约束的潜力,也可能提供有关异常值检测的见解。

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