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Tests for Differences between Least Squares and Robust Regression Parameter Estimates and Related Topics.

机译:测试最小二乘和稳健回归参数估计之间的差异以及相关主题。

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摘要

At the present time there is no well accepted test for comparing least squares and robust linear regression coefficient estimates. To fill this gap we propose and demonstrate the efficacy of two Wald-like statistical tests for the above purposes, using for robust regression the class of MM-estimators. The tests are designed to detect significant differences between least squares and robust estimates due to both inefficiency of least squares under fat-tailed non-normality and significantly larger biases of least squares relative to robust regression coefficient estimators under bias inducing distributions. The asymptotic normality of the test statistics is established and the finite sample level and power of the tests are evaluated by Monte Carlo, with the latter yielding promising results. The first part of our research focuses on the LS and robust regression slope estimators, both of which are consistent under skewed error distributions. A second part of the research focuses on intercept estimation, in which case there is a need to adjust for some bias in the robust MM-intercept estimator under skewed error distributions. An interesting by-product of our research is that use of the slowly re-descending Tukey bisquare loss function leads to better test performance than the rapidly re-descending min-max bias optimal loss function.
机译:目前,还没有公认的用于比较最小二乘和稳健的线性回归系数估计的测试。为了填补这一空白,我们提出并证明了两种Wald类统计检验针对上述目的的有效性,并使用了MM估计量类别进行了稳健的回归。这些测试旨在检测最小二乘和稳健估计之间的显着差异,这是由于在肥尾非正态下最小二乘效率低下以及相对于鲁棒性回归系数估计量在偏差诱导分布下的最小二乘偏差明显更大。建立了检验统计量的渐近正态性,并通过蒙特卡洛评估了有限样本水平和检验功效,后者产生了可喜的结果。我们的研究的第一部分关注于LS和鲁棒回归斜率估计量,它们在偏斜误差分布下都是一致的。研究的第二部分侧重于截距估计,在这种情况下,需要在偏斜误差分布下,针对鲁棒的MM截距估计器中的某些偏差进行调整。我们研究的一个有趣的副产品是,与快速下降的最小-最大偏置最佳损失函数相比,使用缓慢下降的Tukey双平方损失函数可导致更好的测试性能。

著录项

  • 作者

    Maravina, Tatiana A.;

  • 作者单位

    University of Washington.;

  • 授予单位 University of Washington.;
  • 学科 Statistics.
  • 学位 Ph.D.
  • 年度 2012
  • 页码 214 p.
  • 总页数 214
  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类
  • 关键词

  • 入库时间 2022-08-17 11:43:48

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