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Large sample confidence intervals for the skewness parameter of the skew-normal distribution based on Fisher's transformation

机译:基于Fisher变换的偏正态分布偏度参数的大样本置信区间

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The skew-normal model is a class of distributions that extends the Gaussian family by including a skew-ness parameter. This model presents some inferential problems linked to the estimation of the skewness parameter. In particular its maximum likelihood estimator can be infinite especially for moderate sample sizes and is not clear how to calculate confidence intervals for this parameter. In this work, we show how these inferential problems can be solved if we are interested in the distribution of extreme statistics of two random variables with joint normal distribution. Such situations are not uncommon in applications, especially in medical and environmental contexts, where it can be relevant to estimate the distribution of extreme statistics. A theoretical result, found by Loperfido [7], proves that such extreme statistics have a skew-normal distribution with skewness parameter that can be expressed as a function of the correlation coefficient between the two initial variables. It is then possible, using some theoretical results involving the correlation coefficient, to find approximate confidence intervals for the parameter of skewness. These theoretical intervals are then compared with parametric bootstrap intervals by means of a simulation study. Two applications are given using real data.
机译:偏态正态模型是一类分布,它通过包含偏度参数来扩展高斯族。该模型提出了一些与偏度参数估计有关的推断问题。特别地,其最大似然估计器可能是无限的,尤其是对于中等样本量,并且尚不清楚如何计算该参数的置信区间。在这项工作中,我们展示了如果我们对具有联合正态分布的两个随机变量的极值统计的分布感兴趣,那么如何解决这些推理问题。这种情况在应用程序中并不少见,特别是在医学和环境环境中,这可能与估计极端统计数据的分布有关。 Loperfido [7]发现的理论结果证明,这种极端统计数据具有偏态正态分布,其偏度参数可以表示为两个初始变量之间相关系数的函数。然后,可以使用一些涉及相关系数的理论结果来找到偏度参数的近似置信区间。然后,通过模拟研究将这些理论间隔与参数自举间隔进行比较。使用实际数据给出了两个应用程序。

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