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Graphical models for infinite measures with applications to extremes

Sebastian Engelke, Jevgenijs Ivanovs, Kirstin Strokorb

Research output: Contribution to journalArticlepeer-review

Abstract

Conditional independence and graphical models are well studied for probability distributions on product spaces. We propose a new notion of conditional independence for any measure Λ on the punctured Euclidean space Rd\{0} that explodes at the origin. The importance of such measures stems from their connection to infinitely divisible and max-infinitely divisible distributions, where they appear as Lévy measures and exponent measures, respectively. We characterize independence and conditional independence for Λ in various ways through kernels and factorization of a modified density, including a Hammersley–Clifford type theorem for undirected graphical models. As opposed to the classical conditional independence, our notion is intimately connected to the support of the measure Λ. Our general theory unifies and extends recent approaches to graphical modeling in the fields of extreme value analysis and Lévy processes. Our results for the corresponding undirected and directed graphical models lay the foundation for new statistical methodology in these areas.
Original languageEnglish
Pages (from-to)3490-3542
JournalAnnals of Applied Probability
DOIs
Publication statusPublished - 20 Oct 2025

Acknowledgements

The authors would like to thank two anonymous referees for their constructive feedback on this manuscript. In particular, this has led us to investigate the graphoid question in more depth.

Funding

SE thankfully acknowledges funding from an Eccellenza grant of the Swiss National Science Foundation (Grant 186858). JI was supported by a Sapere Aude Starting Grant of the Independent Research Fund Denmark (Grant 8049-00021B).

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