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Estimation and prediction of the Burr type XII distribution based on record values and inter-record times

机译:根据记录值和记录间时间估算和预测Burr XII分布

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摘要

The maximum likelihood and Bayesian approaches for parameter estimations and prediction of future record values have been considered for the two-parameter Burr Type XII distribution based on record values with the number of trials following the record values (inter-record times). Firstly, the Bayes estimates are obtained based on a joint bivariate prior for the shape parameters. In this case, the Bayes estimates of the parameters have been developed by using Lindley's approximation and the Markov Chain Monte Carlo (MCMC) method due to the lack of explicit forms under the squared error and the linear-exponential loss functions. The MCMC method has been also used to construct the highest posterior density credible intervals. Secondly, the Bayes estimates are obtained with respect to a discrete prior for the first shape parameter and a conjugate prior for other shape parameter. The Bayes and the maximum likelihood estimates are compared in terms of the estimated risk by the Monte Carlo simulations. We further consider the non-Bayesian and Bayesian prediction for future lower record arising from the Burr Type XII distribution based on record data. The comparison of the derived predictors is carried out by using Monte Carlo simulations. A real data are analysed for illustration purposes.
机译:对于两参数Burr Type XII分布,已经考虑了基于参数值的最大似然和贝叶斯方法进行参数估计和预测,并基于记录值和试验次数跟随记录值(记录间时间)进行了试验。首先,基于形状参数的联合双变量来获得贝叶斯估计。在这种情况下,由于在平方误差和线性指数损失函数下缺乏明确的形式,因此使用Lindley逼近和Markov链蒙特卡洛(MCMC)方法开发了参数的贝叶斯估计。 MCMC方法也已用于构造最高的后密度可信区间。其次,关于第一形状参数的离散先验和关于其他形状参数的共轭先验获得贝叶斯估计。贝叶斯和最大似然估计通过蒙特卡洛模拟根据估计的风险进行比较。我们进一步根据记录数据考虑由Burr Type XII分布引起的未来较低记录的非贝叶斯和贝叶斯预测。导出的预测变量的比较通过使用蒙特卡洛模拟进行。为了说明目的,分析了真实数据。

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