Exponentiated models have been widely used in modeling various types of data such as survival data and insurance claims data. However, the exponentiated composite distribution models have not been explored yet. In this paper, we introduce an improvement of the one-parameter Inverse Gamma-Pareto composite model by exponentiating the random variable associated with the one-parameter Inverse Gamma-Pareto composite distribution function. The goodness-of-fit of the exponentiated Inverse Gamma-Pareto was assessed using three different insurance data sets. The two-parameter exponentiated Inverse Gamma-Pareto model outperforms the one-parameter Inverse Gamma-Pareto model in terms of goodness-of-fit measures for all datasets. In addition, the proposed exponentiated composite Inverse Gamma-Pareto model provides a very good fit with some well-known insurance datasets.
翻译:在模拟诸如生存数据和保险索赔数据等各类数据时,广泛使用了指数模型,然而,尚未探索引言的复合分布模型。在本文件中,我们通过推理与单数Gamma-Pareto复合分布功能有关的随机变量,改进了单数Gamma-Pareto复合模型。利用三个不同的保险数据集评估了引言的反伽马-Pareto复合模型的优劣性。两个参数的反伽马-Pareto模型比单数Gamma-Pareto模型更符合所有数据集的有利计量标准。此外,拟议的引言式复合Inverse Gamma-Pareto模型与一些众所周知的保险数据集非常匹配。