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Structure learning for extremal tree models

Methodology 2022-08-18 v3

Abstract

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.

Keywords

Cite

@article{arxiv.2012.06179,
  title  = {Structure learning for extremal tree models},
  author = {Sebastian Engelke and Stanislav Volgushev},
  journal= {arXiv preprint arXiv:2012.06179},
  year   = {2022}
}