Thanks to their ability to capture complex dependence structures, copulas are frequently used to glue random variables into a joint model with arbitrary marginal distributions. More recently, they have been applied to solve statistical learning problems such as regression or classification. Framing such approaches as solutions of estimating equations, we generalize them in a unified framework. We can then obtain simultaneous, coherent inferences across multiple regression-like problems. We derive consistency, asymptotic normality, and validity of the bootstrap for corresponding estimators. The conditions allow for both continuous and discrete data as well as parametric, nonparametric, and semiparametric estimators of the copula and marginal distributions. The versatility of this methodology is illustrated by several theoretical examples, a simulation study, and an application to financial portfolio allocation.
翻译:由于它们能够捕捉复杂的依赖结构,合金经常被用来将随机变量粘合成一个联合模型,任意的边际分布;最近,它们被用来解决诸如回归或分类等统计学习问题;将诸如估计方程式的方法等方法加以划分,我们在一个统一的框架内加以概括;然后,我们就可以在多个类似回归的问题中取得同步、一致的推论;我们为相应的估量者取得一致性、无症状的正常性以及靴带的有效性;这些条件既允许连续数据,也允许离散数据,也允许对准数据、非参数和半参数的估测分器,例如对焦和边际分布的估测器;这一方法的多功能性通过几个理论例子、模拟研究和对金融投资组合分配的应用来说明。