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Use of reference distributions when dealing with unknown regression errors

机译:处理未知回归误差时使用参考分布

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摘要

A problem of estimating regression coefficients is considered when the distribution of error terms is unknown but symmetric. We propose the use of reference distributions having various kurtosis values. it is assumed that the true error distribution is one of the reference distributions, but the indicator variable for the true distribution is missing. The generalized expectation-maximization algorithm combined with a line search is developed for estimating regression coefficients. Simulation experiments are carried out to compare the performance of the proposed approach with some existing robust regression methods including least absolute deviation. Lp, Huber M regression and an approximation using normal mixtures under various error distributions. As the error distribution is far from a normal distribution, the proposed method is observed to show better performance than other methods.
机译:当误差项的分布未知但对称时,会考虑估计回归系数的问题。我们建议使用具有各种峰度值的参考分布。假设真实误差分布是参考分布之一,但是缺少真实分布的指标变量。为估计回归系数,开发了与线搜索相结合的广义期望最大化算法。进行了仿真实验,以将所提出的方法与包括最小绝对偏差在内的一些现有鲁棒回归方法的性能进行比较。 Lp,Huber M回归以及在各种误差分布下使用正态混合的逼近。由于误差分布远离正态分布,因此所观察到的方法显示出比其他方法更好的性能。

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