Catastrophe (CAT) bond markets are incomplete and hence carry uncertainty in instrument pricing. As such various pricing approaches have been proposed, but none treat the uncertainty in catastrophe occurrences and interest rates in a sufficiently flexible and statistically reliable way within a unifying asset pricing framework. Consequently, little is known empirically about the expected risk-premia of CAT bonds. The primary contribution of this paper is to present a unified Bayesian CAT bond pricing framework based on uncertainty quantification of catastrophes and interest rates. Our framework allows for complex beliefs about catastrophe risks to capture the distinct and common patterns in catastrophe occurrences, and when combined with stochastic interest rates, yields a unified asset pricing approach with informative expected risk premia. Specifically, using a modified collective risk model -- Dirichlet Prior-Hierarchical Bayesian Collective Risk Model (DP-HBCRM) framework -- we model catastrophe risk via a model-based clustering approach. Interest rate risk is modeled as a CIR process under the Bayesian approach. As a consequence of casting CAT pricing models into our framework, we evaluate the price and expected risk premia of various CAT bond contracts corresponding to clustering of catastrophe risk profiles. Numerical experiments show how these clusters reveal how CAT bond prices and expected risk premia relate to claim frequency and loss severity.
翻译:由于提出了各种定价办法,但没有在统一资产定价框架内以足够灵活和统计可靠的方式处理灾难发生和利率的不确定性,因此,很少有人从经验上了解CAT债券的预期风险溢价。本文件的主要贡献是提出一个以灾难和利率的不确定性量化和利率为基础的统一的Bayesian CAT债券定价框架。我们的框架允许对灾难风险的复杂认识,以便捕捉灾难发生时的不同和常见模式,如果与随机利率相结合,产生一种统一的资产定价办法,并产生信息化的预期风险预估风险。具体地说,我们利用一个经过修改的集体风险模式 -- -- 迪里赫莱特·前最高巴耶斯集体风险模型(DP-HBCRM)框架 -- -- 我们通过基于模型的集群方法模拟灾难风险风险风险。利率风险模型是作为贝伊办法下的CIR进程模型。作为将CAT定价模型纳入我们的框架,我们评估与灾难风险风险预测组合和CAT风险预测损失概率指数如何反映这些风险指数和CAT风险指数的预期风险指数。