Understanding variable dependence, particularly eliciting their statistical properties given a set of covariates, provides the mathematical foundation in practical operations management such as risk analysis and decision making given observed circumstances. This article presents an estimation method for modeling the conditional joint distribution of bivariate outcomes based on the distribution regression and factorization methods. This method is considered semiparametric in that it allows for flexible modeling of both the marginal and joint distributions conditional on covariates without imposing global parametric assumptions across the entire distribution. In contrast to existing parametric approaches, our method can accommodate discrete, continuous, or mixed variables, and provides a simple yet effective way to capture distributional dependence structures between bivariate outcomes and covariates. Various simulation results confirm that our method can perform similarly or better in finite samples compared to the alternative methods. In an application to the study of a motor third-part liability insurance portfolio, the proposed method effectively estimates risk measures such as the conditional Value-at-Risks and Expexted Sortfall. This result suggests that this semiparametric approach can serve as an alternative in insurance risk management.
翻译:理解变量间的相关性,尤其是在给定一组协变量的情况下,调查它们的统计属性,为实际经营管理(例如风险分析和根据观察到的情况做出决策)提供了数学基础。本文提出了一种估计方法,用于基于分布回归和因式分解方法对双变量结果的条件联合分布进行建模。这种方法被认为是半参数化的,因为它允许在没有对整个分布施加全局参数假设的情况下,灵活地对协变量的边际和联合分布进行建模。与现有的参数化方法相比,我们的方法可以适应离散、连续或混合变量,并提供了一种简单而有效的方式来捕获双变量结果和协变量之间的分布依赖结构。各种模拟结果证实,我们的方法在有限样本中可以表现出比替代方法相似或更好的性能。在用于研究机动车第三责任保险组合的应用中,所提出的方法有效地估计了风险度量,例如条件风险价值和预期故障。这个结果表明这种半参数化的方法可以作为保险风险管理的一种替代方法。