Analysing dependent risks is an important task for insurance companies. A dependency is reflected in the fact that information about one random variable provides information about the likely distribution of values of another random variable. Insurance companies in particular must investigate such dependencies between different lines of business and the effects that an extreme loss event, such as an earthquake or hurricane, has across multiple lines of business simultaneously. Copulas provide a popular model-based approach to analysing the dependency between risks, and the coefficient of tail dependence is a measure of dependence for extreme losses. Besides commonly used empirical estimators for estimating the tail dependence coefficient, copula fitting can lead to estimation of such coefficients directly or can verify their existence. Generally, a range of copula models is available to fit a data set well, leading to multiple different tail dependence results; a method based on Bayesian model averaging is designed to obtain a unified estimate of tail dependence. In this article, this model-based coefficient estimation method is illustrated through a variety of copula fitting approaches and results are presented for several simulated data sets and also a real general insurance loss data set.
翻译:分析依赖性风险是保险公司的一项重要任务。关于一个随机变量的信息提供了另一个随机变量价值的可能分布的信息,这一事实反映了依赖性。保险公司尤其必须调查不同业务线之间的这种依赖性,以及地震或飓风等极端损失事件同时跨越多个业务线的影响。科普拉提供了一种以流行模式为基础的方法,用以分析风险之间的依赖性,而尾巴依赖性系数是衡量极端损失依赖性的尺度。除了通常用来估计尾巴依赖性系数的经验性估计数据外,配方可以直接估计或核实其存在。一般而言,一系列合影模型可以很好地适应数据集,导致多种不同的尾巴依赖性结果;一种以巴伊斯模型平均值为基础的方法旨在获得对尾巴伊斯依赖性的统一估计。在本条中,这种基于模型的系数估计方法通过多种椰子配方方法加以说明,并且为若干模拟数据集和真实的一般保险损失数据集提供了结果。