Stochastic loss reserving using individual information model with over-dispersed Poisson

IF 0.7 Q3 STATISTICS & PROBABILITY
Zhigao Wang, Xianyi Wu, Chunjuan Qiu
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引用次数: 2

Abstract

For stochastic loss reserving, we propose an individual information model (IIM) which accommodates not only individual/micro data consisting of incurring times, reporting developments, settlement developments as well as payments of individual claims but also heterogeneity among policies. We give over-dispersed Poisson assumption about the moments of reporting developments and payments of every individual claims. Model estimation is conducted under quasi-likelihood theory. Analytic expressions are derived for the expectation and variance of outstanding liabilities, given historical observations. We utilise conditional mean square error of prediction (MSEP) to measure the accuracy of loss reserving and also theoretically prove that when risk portfolio size is large enough, IIM shows a higher prediction accuracy than individual/micro data model (IDM) in predicting the outstanding liabilities, if the heterogeneity indeed influences claims developments and otherwise IIM is asymptotically equivalent to IDM. Some simulations are conducted to investigate the conditional MSEPs for IIM and IDM. A real data analysis is performed basing on real observations in health insurance.
基于过分散Poisson个体信息模型的随机损失预留
对于随机损失准备金,我们提出了一个个人信息模型(IIM),该模型不仅包含由发生时间、报告发展、结算发展以及个人索赔支付组成的个人/微观数据,还包含保单之间的异质性。我们给出了关于每个索赔的发展和付款报告时刻的过分散泊松假设。模型估计是在准似然理论下进行的。在给定历史观察的情况下,推导了未偿负债的预期和方差的分析表达式。我们利用条件均方预测误差(MSEP)来衡量损失准备金的准确性,并从理论上证明,当风险组合规模足够大时,IIM在预测未偿负债方面比个人/微观数据模型(IDM)显示出更高的预测准确性,如果异质性确实影响索赔发展,否则IIM渐近等价于IDM。进行了一些模拟来研究IIM和IDM的条件MSEP。真实数据分析是基于健康保险中的真实观察进行的。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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来源期刊
CiteScore
0.90
自引率
20.00%
发文量
21
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