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首页> 外文期刊>Communications in Statistics >Comparison of Some Parametric and Nonparametric Type One Sample Confidence Intervals for Estimating the Mean of a Positively Skewed Distribution
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Comparison of Some Parametric and Nonparametric Type One Sample Confidence Intervals for Estimating the Mean of a Positively Skewed Distribution

机译:估计正偏分布均值的一些参数和非参数类型一样本置信区间的比较

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摘要

Several researchers considered various interval estimators for estimating the mean of a skewed distribution. Since they considered in different times and under different simulation conditions, their performance are not comparable as a whole. In this article, an attempt has been made to review some existing estimators and compare them under the same simulation condition. In particular, we consider and compare both classical (Student-t, Land-t, Cheb-t, Johnson-t, Chen-t, Hall-t, median-t, Zhou and Dinh, empirical likelihood, etc.) and nonparametric (bootstrap-t, nonparametric bootstrap, empirical likelihood bootstrap, bias corrected acceleration bootstrap, Hall bootstrap-t, empirical Hall bootstrap, etc.) interval estimators for estimating the mean of a positively skewed distribution. A simulation study has been made to compare the performance of the estimators. Both average widths and coverage probabilities are considered as a criterion of the good estimators. Under the large sample sizes, the performances of the estimators are not different. However, they differ significantly when the sample sizes are small and data are from a highly skewed distribution. Some real-life data have been analyzed to illustrate the findings of the article. Based on the simulation study, some possible good interval estimators have been recommended for the practitioners. This article will provide more choices for the practitioners to use best possible interval estimators among many that have been used by several researchers at different times and situations.
机译:几位研究人员考虑了各种区间估计器来估计偏态分布的均值。由于它们是在不同的时间和不同的仿真条件下考虑的,因此它们的性能在总体上是不可比的。在本文中,已尝试检查一些现有的估计量,并在相同的模拟条件下进行比较。特别是,我们考虑并比较了经典(学生t,Landt,Cheb-t,Johnson-t,Chen-t,Hall-t,中位数t,Zhou和Dinh,经验似然等)和非参数(bootstrap-t,非参数bootstrap,经验似然bootstrap,偏差校正加速度bootstrap,Hall bootstrap-t,经验Hall bootstrap等)间隔估计器,用于估计正偏分布的均值。进行了仿真研究,以比较估计器的性能。平均宽度和覆盖率均被视为良好估计量的标准。在大样本量下,估计量的性能没有差异。但是,当样本量较小且数据来自高度偏斜的分布时,它们会显着不同。分析了一些现实生活中的数据以说明本文的发现。根据模拟研究,已为从业人员推荐了一些可能的良好区间估计器。本文将为从业人员提供更多选择,以使他们可以使用最佳的区间估计器,这些估计器已被数名研究人员在不同时间和情况下使用。

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