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Bounded influence estimation for regression and scale

机译:回归和规模的有界影响估计

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Bednarski and Müller [Optimal bounded influence regression and scale M-estimators in the context of experimental design, Statistics 35 (2001), pp. 349-369] introduced a class of bounded influence M estimates for the simultaneous estimation of regression and scale in the linear model with normal errors by solving the corresponding normal location and scale problem at each design point. This limits the proposal to regressor distributions with finite support. Based on their approach, we propose a slightly extended class of M estimates that is not restricted to finite support and is numerically easier to handle. Moreover, we employ the even more general class of asymptotically linear (AL) estimators which, in addition, is not restricted to normal errors. The superiority of AL estimates is demonstrated by numerical comparisons of the maximum asymptotic mean-squared error over infinitesimal contamination neighbourhoods.
机译:Bednarski和Müller[在实验设计的背景下,最佳有界影响力回归和规模M估计量,统计35(2001),第349-369页]引入了一类有界影响力M估计,用于同时估计回归和规模。具有线性误差的线性模型,方法是在每个设计点求解相应的正常位置和比例尺问题。这将建议限制在有限支持的回归分布上。根据他们的方法,我们提出了M估计的稍微扩展的类,它不限于有限支持,并且在数值上更易于处理。此外,我们采用了更为一般的渐近线性(AL)估计量,其不仅限于法线误差。 AL估计的优越性通过最大渐近均方误差与无穷小污染邻域的数值比较得到证明。

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