Aradhye Girish, Bhati Deepesh, Tzougas George
Department of Statistics, Central University of Rajasthan, Ajmer, India.
Maxwell Institute for Mathematical Sciences and Department of Actuarial Mathematics and Statistics, Heriot-Watt University, Edinburgh, UK.
J Appl Stat. 2024 Feb 26;51(14):2832-2850. doi: 10.1080/02664763.2024.2319232. eCollection 2024.
In this study, we explore the potential of composite probability distributions in effectively modeling claim severity data, which encompasses a spectrum of losses, ranging from minor to substantial. Our approach incorporates the innovative Mode-Matching technique to introduce a novel composite Lognormal-Burr distribution family. To comprehensively address the diverse risk characteristics exhibited by policyholders, we develop a regression model based on the composite Lognormal-Burr distribution. Additionally, we delve into the details of the parameter estimation method required for precise model parameter estimation. The practical utility of our proposed composite regression model is substantiated through its application to real-world insurance data, serving as a compelling illustration of its effectiveness.
在本研究中,我们探讨了复合概率分布在有效建模索赔严重程度数据方面的潜力,该数据涵盖了从轻微到重大的一系列损失。我们的方法采用了创新的模式匹配技术,引入了一个新颖的复合对数正态-伯尔分布族。为了全面应对投保人表现出的各种风险特征,我们基于复合对数正态-伯尔分布开发了一个回归模型。此外,我们深入研究了精确估计模型参数所需的参数估计方法的细节。我们提出的复合回归模型的实际效用通过其在实际保险数据中的应用得到了证实,有力地证明了其有效性。