Estimation and comparison of Weibull-Normal distribution with some other probability models using Bayesian method of estimation

Suleiman Aliyu, M. A. Bamanga
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Abstract

In statistical applications the Normal distribution is adjudged to be the best. Recent studies Terna (2017) using classical method indicated that Weibull-Normal distribution outperformed the Normal distribution. In this study we used the non-classical Bayesian method of estimation to estimate and compare the Weibull-Normal distribution with some other distributions including Normal and Gamma-Normal distributions. This study derived explicit expressions for basic statistical properties such as moments, moment generating function, the characteristic function, reliability analysis and the distribution of order statistics. It looks at estimation of confidence intervals for the parameters of the Weibull-Normal distribution and estimated the parameters of the new distribution using a non-classical approach for the purpose of theoretical comparisons. The two other distributions whose parameters were also estimated by using Bayesian estimation are the normal distribution and gamma distribution as well as the combination Gamma-Normal distribution. Based on the analyses and interpretations of the results obtained it was found that the parameters and other general properties of Normal distribution gives a better fit than other distributions. R-software was used; the models were written as an R code in R program using the rjags library, the distribution parameters were obtained from a Gibbs sampling of a Bayesian Fit for data set I and data set II. The criteria used in R for comparisons were the negative log-likelihood, AIC (Akaike information criterion), CAIC (Consistent Akaike Information Criterion) and BIC (Bayesian information Criterion).
使用贝叶斯估计法估计和比较 Weibull-Normal 分布与其他一些概率模型
在统计应用中,正态分布被认为是最好的分布。最近 Terna(2017 年)使用经典方法进行的研究表明,Weibull-正态分布的表现优于正态分布。在本研究中,我们使用非经典的贝叶斯估计方法来估计 Weibull-Normal 分布,并将其与其他一些分布(包括正态分布和伽马-正态分布)进行比较。本研究推导了基本统计属性的明确表达式,如矩、矩产生函数、特征函数、可靠性分析和阶次统计分布。它研究了魏布尔-正态分布参数置信区间的估计,并使用非经典方法估计了新分布的参数,以便进行理论比较。使用贝叶斯估计法估计参数的其他两种分布是正态分布和伽马分布以及伽马-正态分布组合。根据对所获结果的分析和解释,发现正态分布的参数和其他一般属性比其他分布的拟合效果更好。研究使用了 R 软件;模型是使用 rjags 库在 R 程序中编写的 R 代码,分布参数是通过对数据集 I 和数据集 II 进行贝叶斯拟合的 Gibbs 采样获得的。R 中用于比较的标准是负对数似然、AIC(阿凯克信息标准)、CAIC(一致阿凯克信息标准)和 BIC(贝叶斯信息标准)。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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