Generalized Network Psychometrics: Combining Network and Latent Variable Models
Sacha Epskamp, Mijke Rhemtulla, Denny Borsboom

TL;DR
This paper introduces a unified framework combining network models and latent variable models in psychometrics, extending SEM to include network structures among latent variables and residuals.
Contribution
It presents two novel generalizations, LNM and RNM, integrating network modeling into SEM, and provides algorithms and software for exploratory and confirmatory analysis.
Findings
Simulation studies show effective identification of network structures.
The empirical example demonstrates practical utility in personality assessment.
The framework unifies network and latent variable models in psychometrics.
Abstract
We introduce the network model as a formal psychometric model, conceptualizing the covariance between psychometric indicators as resulting from pairwise interactions between observable variables in a network structure. This contrasts with standard psychometric models, in which the covariance between test items arises from the influence of one or more common latent variables. Here, we present two generalizations of the network model that encompass latent variable structures, establishing network modeling as parts of the more general framework of Structural Equation Modeling (SEM). In the first generalization, we model the covariance structure of latent variables as a network. We term this framework Latent Network Modeling (LNM) and show that, with LNM, a unique structure of conditional independence relationships between latent variables can be obtained in an explorative manner. In the…
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