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The bias and skewness of M-estimators in regression

机译:回归中M估计量的偏差和偏度

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We consider M estimation of a regression model with a nuisance parameter and a vector of other parameters. The unknown distribution of the residuals is not assumed to be normal or symmetric. Simple and easily estimated formulas are given for the dominant terms of the bias and skewness of the parameter estimates. For the linear model these are proportional to the skewness of the ‘independent’ variables. For a nonlinear model, its linear component plays the role of these independent variables, and a second term must be added proportional to the covariance of its linear and quadratic components. For the least squares estimate with normal errors this term was derived by Box [1]. We also consider the effect of a large number of parameters, and the case of random independent variables.
机译:我们考虑带有讨厌参数和其他参数向量的回归模型的M估计。残差的未知分布不假定为正态或对称。对于参数估计的偏差和偏度的主导项,给出了简单容易估计的公式。对于线性模型,它们与“独立”变量的偏度成正比。对于非线性模型,其线性分量起着这些独立变量的作用,并且必须与线性和二次分量的协方差成比例地添加第二项。对于具有正常误差的最小二乘估计,此项由Box [1]导出。我们还考虑了大量参数的影响,以及随机自变量的情况。

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