Generalized Unit Half-Logistic Geometric Distribution: Properties and Regression with Applications to Insurance

Suleman Nasiru, C. Chesneau, A. Abubakari, I. Angbing
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引用次数: 3

Abstract

The use of distributions to model and quantify risk is essential in risk assessment and management. In this study, the generalized unit half-logistic geometric (GUHLG) distribution is developed to model bounded insurance data on the unit interval. The corresponding probability density function plots indicate that the related distribution can handle data that exhibit left-skewed, right-skewed, symmetric, reversed-J, and bathtub shapes. The hazard rate function also suggests that the distribution can be applied to analyze data with bathtubs, N-shapes, and increasing failure rates. Subsequently, the inferential aspects of the proposed model are investigated. In particular, Monte Carlo simulation exercises are carried out to examine the performance of the estimation method by using an algorithm to generate random observations from the quantile function. The results of the simulation suggest that the considered estimation method is efficient. The univariate application of the distribution and the multivariate application of the associated regression using risk survey data reveal that the model provides a better fit than the other existing distributions and regression models. Under the multivariate application, we estimate the parameters of the regression model using both maximum likelihood and Bayesian estimations. The estimates of the parameters for the two methods are very close. Diagnostic plots of the Bayesian method using the trace, ergodic, and autocorrelation plots reveal that the chains converge to a stationary distribution.
广义单位半logistic几何分布:性质与回归及其在保险中的应用
在风险评估和管理中,使用分布来建模和量化风险是必不可少的。本文提出了广义单元半逻辑几何分布(GUHLG)来对单位区间上的有界保险数据进行建模。相应的概率密度函数图表明,相关分布可以处理呈现左偏、右偏、对称、倒j型和浴缸形状的数据。危险率函数还表明,该分布可以应用于分析具有浴缸、n形和不断增加的故障率的数据。随后,对所提出模型的推理方面进行了研究。特别是,通过使用从分位数函数生成随机观测值的算法,进行了蒙特卡罗模拟练习,以检查估计方法的性能。仿真结果表明,所考虑的估计方法是有效的。对该分布的单变量应用和对风险调查数据的关联回归的多变量应用表明,该模型比其他现有的分布和回归模型具有更好的拟合效果。在多元应用下,我们使用极大似然估计和贝叶斯估计来估计回归模型的参数。两种方法的参数估计值非常接近。使用迹图、遍历图和自相关图的贝叶斯方法诊断图显示,链收敛到平稳分布。
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