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Main Authors: Kistermann, Kevin, Andriamiarana, Vivato V., Kelava, Augustin
Format: Preprint
Published: 2026
Subjects:
Online Access:https://arxiv.org/abs/2603.26116
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author Kistermann, Kevin
Andriamiarana, Vivato V.
Kelava, Augustin
author_facet Kistermann, Kevin
Andriamiarana, Vivato V.
Kelava, Augustin
contents Since the introduction of network psychometrics, several connections to statistical models in "classical" psychometrics (i.e., IRT, SEM, GLM) as well as to approaches from other research fields have been established. In this paper, these developments have been reviewed and synthesized and, based on an exploratory literature search, further advanced and presented in an accessible visual format. This perspective opens up promising opportunities to extend the psychometric-toolbox by incorporating and learning from statistical methodologies developed in other research domains, which often address similar or even identical problems. Highlighting these methodological commonalities may also foster collaboration across research fields that have traditionally remained largely independent. Moreover, awareness of these connections may render methodological development more systematic and goal-directed and may enable a meaningful division of labor, for example between the development of statistical methodology and its practical implementation for empirical research through software tools. Finally, these methodological advances provide new opportunities for empirical research and may contribute to a reconciliation with longstanding conceptual issues concerning psychometric constructs and, more broadly, psychological phenomena.
format Preprint
id arxiv_https___arxiv_org_abs_2603_26116
institution arXiv
publishDate 2026
record_format arxiv
spellingShingle Reconciling Latent Variables and Networks: Exploring and extending the Psychometric-Toolbox
Kistermann, Kevin
Andriamiarana, Vivato V.
Kelava, Augustin
Methodology
Applications
Since the introduction of network psychometrics, several connections to statistical models in "classical" psychometrics (i.e., IRT, SEM, GLM) as well as to approaches from other research fields have been established. In this paper, these developments have been reviewed and synthesized and, based on an exploratory literature search, further advanced and presented in an accessible visual format. This perspective opens up promising opportunities to extend the psychometric-toolbox by incorporating and learning from statistical methodologies developed in other research domains, which often address similar or even identical problems. Highlighting these methodological commonalities may also foster collaboration across research fields that have traditionally remained largely independent. Moreover, awareness of these connections may render methodological development more systematic and goal-directed and may enable a meaningful division of labor, for example between the development of statistical methodology and its practical implementation for empirical research through software tools. Finally, these methodological advances provide new opportunities for empirical research and may contribute to a reconciliation with longstanding conceptual issues concerning psychometric constructs and, more broadly, psychological phenomena.
title Reconciling Latent Variables and Networks: Exploring and extending the Psychometric-Toolbox
topic Methodology
Applications
url https://arxiv.org/abs/2603.26116