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On absolutely continuous bivariate generalized exponential power series distribution

机译:关于绝对连续的双方广义指数电源系列分布

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摘要

Recently Mahmoudi and Jafari (2012) introduced generalized exponential power series distributions by compounding generalized exponential with the power series distributions. This is a very flexible distribution with some interesting physical interpretation. Kundu and Gupta (2011) introduced an absolute continuous bivariate generalized exponential distribution, whose marginals are generalized exponential distributions. The main aim of this paper is to introduce bivariate generalized exponential power series distributions. Two special cases namely bivariate generalized exponential geometric and bivariate generalized exponential Poisson distributions are discussed in details. It is observed that both the special cases are very flexible and their joint probability density functions can take variety of shapes. They have interesting copula structures and these can be used to study their different dependence structures and to compute different dependence measures. It is observed that both the models have six unknown parameters each, and the maximum likelihood estimators cannot be obtained in closed form. We have proposed to use EM algorithm to compute the maximum likelihood estimators of the unknown parameters. Some simulation experiments have been performed to see the effectiveness of the proposed EM algorithm. The analyses of two data sets have been performed for illustrative purposes, and it is observed that the proposed models and the EM algorithm work quite satisfactorily. Finally we provide the multivariate generalization of the proposed model.
机译:最近Mahmoudi和Jafari(2012)通过使用电力系列分布复制广义指数来引入广义指数电源系列分布。这是一个非常灵活的分布,具有一些有趣的物理解释。 Kundu和Gupta(2011)介绍了绝对的连续双方广义指数分布,其边际是泛化指数分布。本文的主要目的是引入双变量广义指数功率系列分布。两种特殊情况即是一分识别的广义指数几何和二元广义指数泊松分布。观察到,特殊情况非常灵活,它们的联合概率密度函数可以采用各种形状。它们具有有趣的Copula结构,这些结构可用于研究其不同的依赖结构并计算不同的依赖措施。观察到,两种模型每个都有六个未知参数,并且不能以封闭形式获得最大似然估计器。我们已经建议使用EM算法来计算未知参数的最大似然估计器。已经进行了一些仿真实验以查看所提出的EM算法的有效性。已经针对说明性目的进行了两种数据集的分析,并且观察到所提出的模型和EM算法非常令人满意。最后,我们提供了所提出的模型的多变量概括。

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