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Consistency of completely outlier-adjusted simultaneous redescending M-estimators of location and scale

机译:位置和范围的完全离群调整的同时降序M估计量的一致性

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This paper gives conditions for the consistency of simultaneous redescending M-estimators for location and scale. The consistency postulates the uniqueness of the parameters μ and σ, which are defined analogously to the estimations by using the population distribution function instead of the empirical one. The uniqueness of these parameters is no matter of course, because redescending ψ- and χ-functions, which define the parameters, cannot be chosen in a way that the parameters can be considered as the result of a common minimizing problem where the sum of ρ-functions of standardized residuals is to be minimized. The parameters arise from two minimizing problems where the result of one problem is a parameter of the other one. This can give different solutions. Proceeding from a symmetrical unimodal distribution and the usual symmetry assumptions for ψ and χ leads, in most but not in all cases, to the uniqueness of the parameters. Under this and some other assumptions, we can also prove the consistency of the according M-estimators, although these estimators are usually not unique even when the parameters are. The present article also serves as a basis for a forthcoming paper, which is concerned with a completely outlier-adjusted confidence interval for μ. So we introduce a ñ where data points far away from the bulk of the data are not counted at all.
机译:本文给出了同时降低位置和规模的M估计量的一致性的条件。一致性假设参数μ和σ的唯一性,它们通过使用总体分布函数而不是经验函数与估计近似地定义。这些参数的唯一性当然不是问题,因为定义参数的ψ函数和χ函数的降序不能以将参数视为ρ的总和的常见最小化问题的结果的方式来选择。 -标准化残差的函数将被最小化。参数来自两个最小化问题,其中一个问题的结果是另一个问题的参数。这可以给出不同的解决方案。从对称单峰分布和ψ和χ的通常对称假设出发,在大多数情况下(但并非在所有情况下)导致参数的唯一性。在此假设和其他一些假设下,我们也可以证明相应的M估计量的一致性,尽管即使参数相同,这些估计量通常也不是唯一的。本文还作为即将发表的论文的基础,该论文涉及对μ的完全离群调整的置信区间。因此,我们引入了ñ,其中根本不计算远离大量数据的数据点。

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