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Statistical Inference for the power Lindley model based on record values and inter-record times

机译:基于记录值和际际次幂型模型的统计推断

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A new generalization of the Lindley distribution, called the power Lindley distribution was proposed by Ghitany et al., (2013), which offers a more flexible distribution for modeling lifetime data, such as in reliability. They studied classical inferences for the model based on complete data sets. However, we may deal with record breaking data sets in which only values smaller (or larger) than the current extreme value are reported. In this paper, by using record values and inter-record times, we develop inference procedures for the estimation of the parameters and prediction of future record values for the power Lindley distribution. First, the maximum likelihood estimate of the parameters and their asymptotic confidence intervals are obtained. Next, we consider Bayes estimation under the symmetric (squared error) and asymmetric (linear-exponential (LINEX)) loss functions by using the joint bivariate density function. Since the closed forms of the estimates are not available, we encounter some computational difficulties to evaluate the Bayes estimates of the parameters involved in the model. For this reason, we use Tierney and Kadane's method as well as Markov Chain Monte Carlo (MCMC) procedure to compute approximate Bayes estimates. We further consider the non-Bayesian and Bayesian prediction for future lower record arising from the power Lindley distribution based on record data. The comparison of the derived predictors is carried out by using Monte Carlo simulations. A real data set is analyzed for illustration purposes. (C) 2018 Elsevier B.V. All rights reserved.
机译:该林德利分布的新的概括,称为功率林德利分布提出Ghitany等人,(2013),它提供用于建模寿命数据,如在可靠性的更灵活的分配。他们基于完整的数据集学习古典的推论模型。但是,我们可以应对破纪录的数据集,其中仅值大于报告当前极端值小(或更大)。在本文中,通过使用记录值和记录间的时间,我们制定的参数为功率林德利分布的估计和预测未来的记录值的推断过程。首先,将参数的最大似然估计和它们的渐近置信区间获得。下一步,我们通过使用关节二元密度函数考虑对称(平方误差)根据贝叶斯估计和不对称的(线性指数(LINEX))损耗函数。由于估计的封闭形式是不可用的,我们遇到了一些计算困难,以评估参与模型参数的贝叶斯估计。出于这个原因,我们使用蒂尔尼和Kadane的方法,以及马尔可夫链蒙特卡罗(MCMC)方法来计算近似的贝叶斯估计。我们进一步考虑非贝叶斯和贝叶斯预测未来较低的基于记录数据的功率林德利分配产生的记录。所导出的预测值的比较是通过使用蒙特卡罗模拟进行。一个真正的数据集进行分析说明目的。 (c)2018年elestvier b.v.保留所有权利。

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