English

Elliptical graphical modelling

Methodology 2015-06-16 v1

Abstract

We propose elliptical graphical models based on conditional uncorrelatedness as a general- ization of Gaussian graphical models by letting the population distribution be elliptical instead of normal, allowing the fitting of data with arbitrarily heavy tails. We study the class of propor- tionally affine equivariant scatter estimators and show how they can be used to perform elliptical graphical modelling, leading to a new class of partial correlation estimators and analogues of the classical deviance test. General expressions for the asymptotic variance of partial correla- tion estimators, unconstrained and under decomposable models, are given, and the asymptotic chi square approximation of the pseudo-deviance test statistic is proved. The feasibility of our approach is demonstrated by a simulation study, using, among others, Tyler's scatter estimator, which is distribution-free within the elliptical model. Our approach provides a robustification of Gaussian graphical modelling. The latter is likelihood-based and known to be very sensitive to model misspecification and outlying observations.

Keywords

Cite

@article{arxiv.1506.04321,
  title  = {Elliptical graphical modelling},
  author = {Daniel Vogel and Roland Fried},
  journal= {arXiv preprint arXiv:1506.04321},
  year   = {2015}
}
R2 v1 2026-06-22T09:53:12.224Z