Extremal graphical models are sparse statistical models for multivariate extreme events. The underlying graph encodes conditional independencies and enables a visual interpretation of the complex extremal dependence structure. For the important case of tree models, we develop a data-driven methodology for learning the graphical structure. We show that sample versions of the extremal correlation and a new summary statistic, which we call the extremal variogram, can be used as weights for a minimum spanning tree to consistently recover the true underlying tree. Remarkably, this implies that extremal tree models can be learned in a completely non-parametric fashion by using simple summary statistics and without the need to assume discrete distributions, existence of densities, or parametric models for bivariate distributions.
翻译:Extremal图形模型是多变性极端事件的稀有统计模型。 基本图表编码了有条件的相互依存性,可以对复杂的极端依赖结构进行直观解释。 对于重要的树型模型来说,我们开发了一种数据驱动方法,用于学习图形结构。 我们显示,极端相关性的样本版本和新的摘要统计(我们称之为 extremal varigraphic)可以用作最小覆盖树的权重,以持续恢复真正的树底。 值得注意的是,这意味着通过使用简单的简要统计数据,无需假定离散分布、密度的存在或双变量分布的准参数模型,就可以以完全非参数的方式学习极端树模型。