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A Bayesian Multiple Ising Model

  • Alejandra Avalos Pacheco*
  • , Andrea Lazzerini
  • , Monia Lupparelli
  • , Francesco C Stingo
  • *Korrespondierende/r Autor/-in für diese Arbeit

Publikation: Beitrag in Buch/Bericht/KonferenzbandKonferenzbeitragBegutachtung

Abstract

Graphical models are a powerful tool for visually representing conditional independence structures of a set of variables. Recently, multiple graphical models for Gaussian variables have been extensively studied to analyse data coming from subgroups or subpopulations. However, proposals for binary sampling models remain limited. Here we present a methodological framework for Bayesian inference and model selection in multiple Ising models. We aim to model the variability introduced into a collection of binary variables due to external factors. The proposed Bayesian approach leverages conjugate priors and Laplace approximations, facilitating efficient model selection through a Metropolis-Hastings algorithm. Our methodological contributions are learning subgroup network structures for both model selection and parameter inference. We compare the performance of our proposed Bayesian method and other competing approaches, and show that our proposed method has a good performance in identifying related groups while offering balanced network sparsity and edge selection.

OriginalspracheEnglisch
TitelNew Trends in Bayesian Statistics
Untertitel(BAYSM 2023)
Herausgeber*innenAlejandra Avalos-Pacheco, Fan Bu, Beatrice Franzolini, Beniamino Hadj-Amar
VerlagSpringer, Cham
Seiten49-56
Seitenumfang8
Auflage1
ISBN (elektronisch)978-3-031-99009-0
ISBN (Print)978-3-031-99008-3
DOIs
PublikationsstatusVeröffentlicht - 02 Jän. 2026

Publikationsreihe

NameSpringer Proceedings in Mathematics & Statistics
Band511

Wissenschaftszweige

  • 101018 Statistik
  • 509013 Sozialstatistik
  • 102035 Data Science
  • 102009 Computersimulation
  • 102037 Visualisierung

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