An Empirical Investigation of the Value of Finalisation Count Information to Loss Reserving

G. Taylor, Jing Xu
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引用次数: 6

Abstract

The purpose of the present paper has been to test whether loss reserving models that rely on claim count data can produce better forecasts than the chain ladder model (which does not rely on counts); better in the sense of being subject to a lesser prediction error. The question at issue has been tested empirically by reference to the Meyers-Shi data set. Conclusions are drawn on the basis the emerging numerical evidence. The chain ladder is seen as susceptible to forecast error when applied to a portfolio characterised by material changes over time in rates of claim finalisation. For this reason, emphasis has been placed here on the selection of such portfolios for testing. The chain ladder model is applied to a number of portfolios, and so are two other models, the Payments Per Claim Incurred (PPCI) and Payments Per Claim Finalised (PPCF), that rely on claim count data. The latter model in particular is intended to control for changes in finalisation rates. Each model is used to estimate loss reserve and the associated prediction error. A compelling narrative emerges. The chain ladder rarely performs well. Either PPCI or PPCF model produces, or both produce, superior performance, in terms of prediction error, 80% of the time. When the chain ladder produces the best performance of the three models, this appears to be accounted for by either erratic count data or rates of claim finalisation that show comparatively little variation over time.
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决算信息对损失准备金价值的实证研究
本文的目的是检验依赖索赔计数数据的损失保留模型是否能比链条阶梯模型(不依赖计数)产生更好的预测;更好的意思是预测误差更小。这个问题已经通过参考meyer - shi数据集进行了实证检验。结论是在新出现的数字证据的基础上得出的。当将链梯法应用于以索赔结案率随时间的重大变化为特征的投资组合时,人们认为它容易出现预测误差。由于这个原因,这里强调的是选择这样的投资组合进行测试。链梯模型适用于许多投资组合,另外两个依赖于索赔计数数据的模型,即每次索赔支付(PPCI)和每次索赔最终支付(PPCF)也是如此。后一种模式尤其旨在控制最终定稿率的变化。每个模型用于估计损失准备金和相关的预测误差。一个令人信服的故事出现了。这个链梯很少好用。无论是PPCI模型还是PPCF模型,或者两者都能在80%的时间内,产生更好的预测误差。当链式梯子在三种模型中产生最佳性能时,这似乎是由于不稳定的计数数据或索赔结案率随时间变化相对较小。
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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