Max-linear graphical models with heavy-tailed factors on trees of transitive tournaments

Author:

Asenova Stefka,Segers JohanORCID

Abstract

Abstract Graphical models with heavy-tailed factors can be used to model extremal dependence or causality between extreme events. In a Bayesian network, variables are recursively defined in terms of their parents according to a directed acyclic graph (DAG). We focus on max-linear graphical models with respect to a special type of graph, which we call a tree of transitive tournaments. The latter is a block graph combining in a tree-like structure a finite number of transitive tournaments, each of which is a DAG in which every two nodes are connected. We study the limit of the joint tails of the max-linear model conditionally on the event that a given variable exceeds a high threshold. Under a suitable condition, the limiting distribution involves the factorization into independent increments along the shortest trail between two variables, thereby imitating the behaviour of a Markov random field. We are also interested in the identifiability of the model parameters in the case when some variables are latent and only a subvector is observed. It turns out that the parameters are identifiable under a criterion on the nodes carrying the latent variables which is easy and quick to check.

Publisher

Cambridge University Press (CUP)

Subject

Applied Mathematics,Statistics and Probability

Reference36 articles.

1. Recursive max-linear models with propagating noise;Buck;Electron. J. Statist.,2021

2. [1] Améndola, C. , Hollering, B. , Sullivant, S. and Tran, N. (2021). Markov equivalence of max-linear Bayesian networks. In Proceedings of the Thirty-Seventh Conference on Uncertainty in Artificial Intelligence (Proceedings of Machine Learning Research 161), eds de Campos, C. and Maathuis, M. H. , Research Press, ML , pp. 1746–1755.

3. Conditional independence in max-linear Bayesian networks;Améndola;Ann. Appl. Prob.,2022

4. Identifiability and estimation of recursive max-linear models;Gissibl;Scand. J. Statist.,2021

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