首页> 外文期刊>The Annals of applied statistics >REGRESSION FOR COPULA-LINKED COMPOUND DISTRIBUTIONS WITH APPLICATIONS IN MODELING AGGREGATE INSURANCE CLAIMS
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REGRESSION FOR COPULA-LINKED COMPOUND DISTRIBUTIONS WITH APPLICATIONS IN MODELING AGGREGATE INSURANCE CLAIMS

机译:与拟计综合保险索赔的应用程序的复合复合分布的回归

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摘要

In actuarial research a task of particular interest and importance is to predict the loss cost for individual risks so that informative decisions are made in various insurance operations such as underwriting, ratemaking and capital management. The loss cost is typically viewed to follow a compound distribution where the summation of the severity variables is stopped by the frequency variable. A challenging issue in modeling such outcomes is to accommodate the potential dependence between the number of claims and the size of each individual claim. In this article we introduce a novel regression framework for compound distributions that uses a copula to accommodate the association between the frequency and the severity variables and, thus, allows for arbitrary dependence between the two components. We further show that the new model is very flexible and is easily modified to account for incomplete data due to censoring or truncation. The flexibility of the proposed model is illustrated using both simulated and real data sets. In the analysis of granular claims data from property insurance, we find substantive negative relationship between the number and the size of insurance claims. In addition, we demonstrate that ignoring the frequency-severity association could lead to biased decision-making in insurance operations.
机译:在精算研究中,特别感兴趣和重要性的任务是预测个体风险的损失成本,以便在各种保险业务,如承销,大量保险和资本管理等各种保险业务方面进行了信息决策。通常观察损耗成本以遵循复合分布,其中频率变量停止严重变量的总和。在建模这种结果的情况下具有具有挑战性的问题是适应索赔人数和每个人索赔的规模之间的潜在依赖。在本文中,我们向复合分布介绍了一种新的回归框架,该分布用来容纳频率和严重性变量之间的关联,因此允许两种组件之间的任意依赖性。我们进一步表明,新模型非常灵活,并且很容易修改以解释由于审查或截断而导致的不完整数据。使用模拟和真实数据集来说明所提出的模型的灵活性。在分析财产保险的粒度索赔数据中,我们在数量与保险索赔的规模之间找到了实质性的负面关系。此外,我们证明忽略频率严重性关联可能导致保险业务的偏见决策。

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