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Representing Sparse Gaussian DAGs as Sparse R-Vines Allowing for Non-Gaussian Dependence

机译:代表稀疏的高斯DAG,作为稀疏的R型葡萄藤,允许非高斯依赖

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摘要

Modeling dependence in high-dimensional systems has become an increasingly important topic. Most approaches rely on the assumption of a multivariate Gaussian distribution such as statistical models on directed acyclic graphs (DAGs). They are based on modeling conditional independencies and are scalable to high dimensions. In contrast, vine copula models accommodate more elaborate features like tail dependence and asymmetry, as well as independent modeling of the marginals. This flexibility comes however at the cost of exponentially increasing complexity for model selection and estimation. We show a novel connection between DAGs with limited number of parents and truncated vine copulas under sufficient conditions. This motivates a more general procedure exploiting the fast model selection and estimation of sparse DAGs while allowing for non-Gaussian dependence using vine copulas. By numerical examples in hundreds of dimensions, we demonstrate that our approach outperforms the standard method for vine structure selection. Supplementary material for this article is available online.
机译:在高维系统中的建模依赖已经成为一个越来越重要的话题。大多数方法依赖于多变量高斯分布的假设,例如指导的非循环图(DAG)上的统计模型。它们基于建模条件独立性,并且可扩展至高维度。相比之下,藤蔓·Copula型号适应更精细的特征,如尾部依赖和不对称,以及边际的独立建模。然而,这种灵活性以指数增加的模型选择和估计的复杂性来实现。我们在父母数量有限的父母和截断的葡萄泛滥之间展示了DAG之间的新联系。这激励了一种更通用的过程,利用快速模型选择和估计稀疏DAG的估计,同时允许使用藤币的非高斯依赖。通过数百个维度的数值例子,我们证明我们的方法优于藤结构选择的标准方法。本文的补充材料在线提供。

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