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Minimum Hellinger distance based inference for scalar skew-normal and skew-t distributions

机译:标量偏正态和偏态t分布的基于最小Hellinger距离的推论

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摘要

The skew-normal is a parametric model that extends the normal family by the addition of a shape parameter to account for skewness. As well, the skew-t distribution is generated by a perturbation of symmetry of the basic Student’s t density. These families share some nice properties. In particular, they allow a continuous variation through different degrees of asymmetry and, in the case of the skew-t, tail thickness, but still retain relevant features of the perturbed symmetric densities. In both models, a problem occurs in the estimation of the skewness parameter: for small and moderate sample sizes, the maximum likelihood method gives rise to an infinite estimate with positive probability, even when the sample skewness is not too large. To get around this phenomenon, we consider the minimum Hellinger distance estimation technique as an alternative to maximum likelihood. The method always leads to a finite estimate of the shape parameter. Furthermore, the procedure is asymptotically efficient under the assumed model and allows for testing hypothesis and setting confidence regions in a standard fashion.
机译:偏斜法线是一个参数模型,通过添加形状参数来解决偏斜度,从而扩展了法线族。同样,歪斜t分布是由基本学生t密度的对称性扰动产生的。这些家庭共享一些不错的属性。特别地,它们允许通过不同的不对称程度进行连续变化,并且在偏斜t的情况下允许尾部厚度变化,但仍保留了扰动的对称密度的相关特征。在这两个模型中,偏度参数的估计都会出现问题:对于较小和中等的样本量,即使样本偏度不太大,最大似然法也会以正概率产生无限估计。为了避免这种现象,我们考虑使用最小Hellinger距离估计技术来替代最大可能性。该方法总是导致形状参数的有限估计。此外,该过程在假定的模型下渐近有效,并且允许测试假设并以标准方式设置置信区域。

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