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Robust-efficient credibility models with heavy-tailed claims: A mixed linear models perspective

机译:具有重尾要求的稳健高效的可信度模型:混合线性模型的观点

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摘要

In actuarial practice, regression models serve as a popular statistical tool for analyzing insurance data and tariff ratemaking. In this paper, we consider classical credibility models that can be embedded within the framework of mixed linear models. For inference about fixed effects and variance components, likelihood-based methods such as (restricted) maximum likelihood estimators are commonly pursued. However, it is well-known that these standard and fully efficient estimators are extremely sensitive to small deviations from hypothesized normality of random components as well as to the occurrence of outliers. To obtain better estimators for premium calculation and prediction of future claims, various robust methods have been successfully adapted to credibility theory in the actuarial literature. The objective of this work is to develop robust and efficient methods for credibility when heavy-tailed claims are approximately log-location-scale distributed. To accomplish that, we first show how to express additive credibility models such as Bühlmann-Straub and Hachemeister ones as mixed linear models with symmetric or asymmetric errors. Then, we adjust adoptively truncated likelihood methods and compute highly robust credibility estimates for the ordinary but heavy-tailed claims part. Finally, we treat the identified excess claims separately and find robust-efficient credibility premiums. Practical performance of this approach is examined - via simulations - under several contaminating scenarios. A widely studied real-data set from workers' compensation insurance is used to illustrate functional capabilities of the new robust credibility estimators.
机译:在精算实践中,回归模型可以用作分析保险数据和制定费率的流行统计工具。在本文中,我们考虑了经典的可信度模型,这些模型可以嵌入混合线性模型的框架中。为了推断固定效应和方差成分,通常采用基于似然性的方法,例如(受限)最大似然估计器。但是,众所周知,这些标准且高效的估计器对随机分量假设的正态性的微小偏差以及异常值的发生极为敏感。为了获得用于保险费计算和未来索赔预测的更好的估算器,精算文献中已经成功地将各种鲁棒的方法应用于可信度理论。这项工作的目的是在重尾索赔近似于对数地点规模分布的情况下,开发出可靠且有效的可信方法。为此,我们首先展示如何将具有相似或不对称误差的混合线性模型(如Bühlmann-Straub和Hachemeister模型)表达为加性可信模型。然后,我们调整过继截断似然法,并为普通但沉重的索赔部分计算高度可靠的可信度估计。最后,我们将识别出的超额索赔分开对待,并找到可靠有效的信誉溢价。在几种污染情况下,通过模拟检查了这种方法的实际性能。来自工人补偿保险的广泛研究的真实数据集用于说明新型稳健可信度估计器的功能。

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