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Robust pairwise multiple comparisons under short-tailed symmetric distributions

机译:短尾对称分布下的稳健的成对多重比较

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In one-way ANOVA, most of the pairwise multiple comparison procedures depend on normality assumption of errors. In practice, errors have non-normal distributions so frequently. Therefore, it is very important to develop robust estimators of location and the associated variance under non-normality. In this paper, we consider the estimation of one-way ANOVA model parameters to make pairwise multiple comparisons under short-tailed symmetric (STS) distribution. The classical least squares method is neither efficient nor robust and maximum likelihood estimation technique is problematic in this situation. Modified maximum likelihood (MML) estimation technique gives the opportunity to estimate model parameters in closed forms under non-normal distributions. Hence, the use of MML estimators in the test statistic is proposed for pairwise multiple comparisons under STS distribution. The efficiency and power comparisons of the test statistic based on sample mean, trimmed mean, wave and MML estimators are given and the robustness of the test obtained using these estimators under plausible alternatives and inlier model are examined. It is demonstrated that the test statistic based on MML estimators is efficient and robust and the corresponding test is more powerful and having smallest Type I error.
机译:在单向方差分析中,大多数成对的多重比较过程都取决于误差的正态性假设。实际上,错误是如此频繁地具有非正态分布。因此,在非正态条件下,开发鲁棒的位置估计器和相关方差非常重要。在本文中,我们考虑了单向方差分析模型参数的估计,以便在短尾对称(STS)分布下进行成对的多重比较。经典的最小二乘法既不高效也不鲁棒,并且在这种情况下最大似然估计技术存在问题。修改后的最大似然(MML)估计技术使您有机会在非正态分布下以封闭形式估计模型参数。因此,建议在检验统计量中使用MML估计量,以在STS分布下进行成对多重比较。给出了基于样本均值,修整均值,波动和MML估计量的检验统计量的效率和功效比较,并检验了在合理的替代方案和inlier模型下使用这些估计量获得的检验的鲁棒性。结果表明,基于MML估计量的检验统计量是有效且健壮的,并且相应的检验功能更强大,且I类误差最小。

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