Copulas are now frequently used to construct or estimate multivariate distributions because of their ability to take into account the multivariate dependence of the different variables while separately specifying marginal distributions. Copula based multivariate models can often also be more parsimonious than fitting a flexible multivariate model, such as a mixture of normals model, directly to the data. However, to be effective, it is imperative that the family of copula models considered is sufficiently flexible. Although finite mixtures of copulas have been used to construct flexible families of copulas, their approximation properties are not well understood and we show that natural candidates such as mixtures of elliptical copulas and mixtures of Archimedean copulas cannot approximate a general copula arbitrarily well. Our article develops fundamental tools for approximating a general copula arbitrarily well by a copulas based on finite mixtures. We show the asymptotic properties as well as illustrate the advantages of our methodology empirically on a financial data set and on some artificial data.
翻译:现在,由于能够考虑到不同变量的多变依赖性,并单独指定边缘分布,科普拉的多变模型往往会比直接与数据相适应的灵活多变模型(如正常模型的混合)更简单。然而,要想有效,就必须使所考虑的千叶模型组群具有足够的灵活性。虽然已使用千叶体的有限混合物来构建灵活的千叶组群,但其近似特性却不为人所熟知,而且我们表明,诸如椭圆和阿齐米德族椰子团的混合物等自然候选体不能任意地接近普通千叶组。我们的文章开发了基本工具,用来任意和根据一定混合物的椰子类相近。我们用一定的混合物来说明我们方法的细微特性,并用经验来说明我们的方法在财务数据集和一些人工数据上的优点。