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Estimation of Aggregate Losses of Secondary Cancer Using PH-OPPL and PH-TPPL Distributions

机译:使用pH-OPPL和PH-TPPL分布估计二次癌骨料损失

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Kenyan insurance firms have introduced insurance policies of chronic illnesses like cancer ; however , they have faced a huge challenge in the pricing of these policies as cancer can transit into different stages , which consequently leads to variation in the cost of treatment. This has made the estimation of aggregate losses of diseases which have multiple stages of transitions such as cancer , an area of interest of many insurance firms. Mixture phase type distributions can be used to solve this setback as they can in-cooperate the transition in the estimation of claim frequency while also in-cooperating the he terogeneity aspect of claim data. In this paper , we estimate the aggregate losses of secondary cancer cases in Kenya using mixture phase type Poisson Lindley distributions. Phase type (PH) distributions for one and two parameter Poisson Lindley are developed as well their compound distributions. The matrix parameters of the PH distributions are estimated using continuous Chapman Kolmogorov equations as the disease process of cancer is continuous while severity is modeled using Pareto, Generalized Pareto and Weibull distributions. This study shows that aggregate losses for Kenyan data are best estimated using PH-OPPL-Weibull model in the case of PH-OPPL distribution models and PH-TPPL-Generalized Pareto model in the case of PH-TPPL distribution models. Comparing the two best models, PH-OPPL-Weibull model provided the best fit for secondary cancer cases in Kenya. This model is also recommended for different diseases which are dynamic in nature like cancer.
机译:肯尼亚保险公司介绍了癌症等慢性疾病的保险政策;然而,他们在这些政策的定价中面临着巨大的挑战,因为癌症可以过境到不同的阶段,因此导致治疗成本的变化。这使得患有多个过渡阶段的疾病的总损失估算,例如癌症,许多保险公司的兴趣领域。混合相位分布可用于解决该挫折,因为它们可以在索赔频率的估计中同时协作转换,同时同时同时合作索赔数据的他雄度方面。在本文中,我们使用混合相位泊松林德利分布估计肯尼亚中癌症病例的总损失。一个和两个参数泊松林德利的相型(pH)分布也是由于它们的复合分布而发展。使用连续的Chapman Kolmogorov方程估计pH分布的基质参数,因为癌症的疾病过程是连续的,而使用帕累托,广义帕累托和威布尔分布进行严重程度。该研究表明,在PH-OPPL分布模型和PH-TPPL分布模型的情况下,使用pH-OPPL-Weibull模型最佳地估计肯尼亚数据的总损失。比较两种最佳模型,PH-OPPL-Weibull模型为肯尼亚的二次癌症病例提供了最适合。还推荐这种模型用于不同疾病,如癌症所在的性质。

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