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Inference for three-parameter M-Wright distributions with applications

机译:应用程序推论三参数M-Wright分布

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We propose point estimators for the three-parameter (location, scale, and the fractional parameter) variant distributions generated by a Wright function. We also provide uncertainty quantification procedures for the proposed point estimators under certain conditions. The class of densities includes the three-parameter one-sided and the three-parameter symmetric bimodal M-Wright family of distributions. The one-sided family naturally generalizes the Airy and half-normal models. The symmetric class includes the symmetric Airy and normal or Gaussian densities. The proposed interval estimator for the scale parameter outperformed the estimator derived in Cahoy (2012) when the location parameter is zero. We obtain the asymptotic covariance structure for the scale and fractional parameter estimators, which allows estimation of the correlation. The coverage probabilities of the interval estimators slightly depend on the proposed location parameter estimators. For the symmetric case, the sample mean (or median) is favored than the median (or mean) when the fractional parameter is greater (or lesser) than 0.39106 in terms of their asymptotic relative efficiency. The estimation algorithms were tested using synthetic data and were compared with their bootstrap counterparts. The proposed inference procedures were demonstrated on age and height data.
机译:我们为Wright函数生成的三参数(位置,比例和分数参数)变量分布提出了点估计器。在某些条件下,我们还为建议的点估计量提供不确定性量化程序。密度类别包括三参数单侧和三参数对称双峰M-Wright族分布。单方面的家庭自然会推广Airy模型和半普通模型。对称类别包括对称的Airy密度和法线或高斯密度。当位置参数为零时,建议的比例参数间隔估计器优于Cahoy(2012)推导的估计器。我们获得了比例和分数参数估计量的渐近协方差结构,该结构允许估计相关性。间隔估计器的覆盖概率在某种程度上取决于所提出的位置参数估计器。对于对称情况,就分数参数的渐近相对效率而言,当分数参数大于(或小于)0.39106时,样本均值(或中位数)比中位数(或均值)更受青睐。使用综合数据测试了估计算法,并将其与自举算法进行了比较。在年龄和身高数据上证明了拟议的推理程序。

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