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Rank-based methods for modeling dependence between loss triangles

机译:基于秩的损失三角形之间相关性建模方法

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摘要

In order to determine the risk capital for their aggregate portfolio, property and casualty insurance companies must fit a multivariate model to the loss triangle data relating to each of their lines of business. As an inadequate choice of dependence structure may have an undesirable effect on reserve estimation, a two-stage inference strategy is proposed in this paper to assist with model selection and validation. Generalized linear models are first fitted to the margins. Standardized residuals from these models are then linked through a copula selected and validated using rank-based methods. The approach is illustrated with data from six lines of business of a large Canadian insurance company for which two hierarchical dependence models are considered, i.e., a fully nested Archimedean copula structure and a copula-based risk aggregation model.
机译:为了确定其总投资组合的风险资本,财产和意外伤害保险公司必须将多元模型拟合到与各自业务相关的损失三角形数据。由于依赖结构选择不当可能对储量估算产生不良影响,因此本文提出了一种两阶段推理策略来辅助模型的选择和验证。首先将通用线性模型拟合到边距。这些模型的标准化残差然后通过使用基于等级的方法选择和验证的copula进行链接。加拿大一家大型保险公司的六个业务部门的数据说明了这种方法,为此,他们考虑了两个层次依赖性模型,即完全嵌套的阿基米德ean科珀拉结构和基于库珀的风险汇总模型。

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