ArXiv TLDR

Multiplex Hypergraph Modeling of Higher Order Structures in Psychometric Networks

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2604.22744

Francesca Possenti, Laura Girelli, Paolo Tieri, Manuela Petti

cs.SIcs.ITq-bio.QM

TLDR

This paper presents a multiplex hypergraph framework to model higher-order symptom interactions in psychometric networks, applied to eating disorders.

Key contributions

  • Introduces a multiplex hypergraph framework to model higher-order symptom interactions in psychometric networks.
  • Utilizes Ω-information to quantify the balance between synergistic and redundant symptom dependencies.
  • Proposes a robust three-stage inferential pipeline for analyzing complex higher-order structures.
  • Reveals a stable transdiagnostic core and diagnosis-specific synergistic patterns in eating disorders.

Why it matters

This work advances psychometric network modeling by capturing complex higher-order symptom interactions beyond pairwise associations. It offers a novel framework to understand how symptoms combine synergistically or redundantly, providing deeper insights into psychiatric disorder organization and potentially informing more nuanced diagnostic and treatment approaches.

Original Abstract

Psychiatric disorders have been traditionally conceptualized as latent conditions producing observable symptoms, but recent studies suggest that psychopathology may emerge from symptoms interactions. Psychometric networking model these relations focusing on pairwise associations but overlooks higher-order dependencies arising among groups of variables. These dependencies may reflect synergistic mechanisms, where joint symptom configurations convey more information than pairwise relations, or redundancy, where information overlaps. We introduce an information-theoretic multiplex hypergraph framework to identify and compare higher-order interactions in eating disorders data, across diagnostic groups (e.g., anorexia nervosa). Higher-order structures are quantified using $Ω$-information, a measure that captures the balance between redundancy and synergy. To address the combinatorial growth of candidate subsets, multiple testing and estimation instability, we propose a structured pipeline comprising: (i) targeted candidate selection based on dyadic network topology and theory-driven subscale information; (ii) a three-stage inferential procedure combining null-model testing with bootstrap robustness assessment; and (iii) the construction and analysis of diagnosis-layered, synergistic and redundant multiplex hypergraphs. Results highlight how synergy captures the emergent, higher-order organization of diagnoses, revealing both a stable transdiagnostic core and diagnosis-specific ways in which these domains combine. By contrast, redundancy is confined to eating and body-image related content, marking reinforcement rather than broader symptom integration.

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