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RANK ESTIMATION OF REGRESSION COEFFICIENTS USING ITERATED REWEIGHTED LEAST SQUARES

机译:使用迭代加权最小二乘估计的回归系数排名

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This paper is concerned with the rank estimator for the parameter vector β in a linear model which is obtained by the minimization of a rank dispersion function. The rank estimator has many advantages over the regular least squares estimator, but the inaccessibility of software to carry out its computation has limited its use. An iterated reweighted least squares algorithm is presented for the computation of the rank estimator. The method is simple in concept and can be carried out readily with a wide variety of statistical software. Details of the method are discussed along with some results on its asymptotic distribution and numerical stability. Some examples are presented to show advantages of the rank method.
机译:本文涉及线性模型中参数向量β的秩估计器,该估计是通过最小化秩弥散函数而获得的。秩估计器比常规最小二乘估计器具有许多优势,但是软件无法执行其计算限制了其使用。提出了一种迭代的加权最小二乘算法,用于秩估计器的计算。该方法概念简单,并且可以使用多种统计软件轻松执行。讨论了该方法的详细信息以及其渐近分布和数值稳定性的一些结果。给出一些示例以显示等级方法的优势。

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