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On the finite mixture of exponential, Rayleigh and Burr Type-XII Distributions: Estimation of Parameters in Bayesian framework

机译:关于指数分布,瑞利分布和伯尔XII分布的有限混合:贝叶斯框架中参数的估计

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In recent years, the finite mixtures of distributions have been proved to be of considerable attention in terms of their practical applications. This paper aims about studying the problem of estimating the parameters of a 3-component mixture of Exponential, Rayleigh and Burr Type-XII distributions using type-I right censoring scheme in Bayesian framework. The elegant closed form expressions for the Bayes estimators and their variances using the non-informative and the informative priors are derived for censored sample as well as for complete sample. The hyperparameters are elicited using prior predictive distribution when no or little prior information is available. The posterior predictive distribution with different priors is derived and the equations necessary to find the lower and upper limits of the Bayesian predictive intervals are constructed. A detailed simulation study is carried out to investigate the performance (in terms of variances) of the Bayes estimators. Finally, the model is illustrated using the real life data. Bayes estimators using the informative prior have been observed performing superior.
机译:近年来,事实证明分布的有限混合在实际应用中引起了极大的关注。本文旨在研究在贝叶斯框架中使用I型右删失方案来估计指数,瑞利和Burr XII分布的3分量混合参数的问题。对于删失样本和完整样本,使用非信息性和信息性先验的贝叶斯估计量及其方差的优雅封闭形式表达式被推导出来。当没有或只有很少的先验信息可用时,使用先验预测分布来引发超参数。推导了具有不同先验的后验预测分布,并建立了寻找贝叶斯预测区间上下限所需的方程。进行了详细的仿真研究,以研究贝叶斯估计量的性能(方差)。最后,使用现实生活中的数据对模型进行了说明。已经观察到使用信息先验的贝叶斯估计器表现更好。

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