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A dependent frequency-severity approach to modeling longitudinal insurance claims

机译:一种依赖频率严重性方法来建模纵向保险索赔

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摘要

In nonlife insurance, frequency and severity are two essential building blocks in the actuarial modeling of insurance claims. In this paper, we propose a dependent modeling framework to jointly examine the two components in a longitudinal context where the quantity of interest is the predictive distribution. The proposed model accommodates the temporal correlation in both the frequency and the severity, as well as the association between the frequency and severity using a novel copula regression. The resulting predictive claims distribution allows to incorporate the claim history on both the frequency and severity into ratemaking and other prediction applications. In this application, we examine the insurance claim frequencies and severities for specific peril types from a government property insurance portfolio, namely lightning and vehicle claims, which tend to be frequent in terms of their count. We discover that the frequencies and severities of these frequent peril types tend to have a high serial correlation over time. Using dependence modeling in a longitudinal setting, we demonstrate how the prediction of these frequent claims can be improved. (C) 2019 Elsevier B.V. All rights reserved.
机译:在非生命保险中,频率和严重程度是保险索赔的精算建模中的两个基本构建块。在本文中,我们提出了一种依赖性建模框架,共同检查了感兴趣量的纵向上下文中的两个组分是预测分布。所提出的模型可容纳频率和严重性的时间相关,以及使用新颖的Copula回归的频率和严重程度之间的关联。由此产生的预测索赔分布允许将索赔历史纳入频率和严重程度,进入大量预测和其他预测应用。在本申请中,我们从政府房地产保险组合,即雷电和车辆索赔中检查保险索赔和特定危险类型的严重程度,这往往在其数量方面经常频繁。我们发现,这些频繁增强类型的频率和速度往往会随着时间的推移而具有高序列相关性。在纵向设置中使用依赖性建模,我们展示了如何改善这些频繁权利要求的预测。 (c)2019 Elsevier B.v.保留所有权利。

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