Abstract

Researchers in the field of network psychometrics often focus on the estimation of Gaussian graphical models (GGMs)—an undirected network model of partial correlations—between observed variables of cross-sectional data or single-subject time-series data. This assumes that all variables are measured without measurement error, which may be implausible. In addition, cross-sectional data cannot distinguish between within-subject and between-subject effects. This paper provides a general framework that extends GGM modeling with latent variables, including relationships over time. These relationships can be estimated from time-series data or panel data featuring at least three waves of measurement. The model takes the form of a graphical vector-autoregression model between latent variables and is termed the ts-lvgvar when estimated from time-series data and the panel-lvgvar when estimated from panel data. These methods have been implemented in the software package psychonetrics, which is exemplified in two empirical examples, one using time-series data and one using panel data, and evaluated in two large-scale simulation studies. The paper concludes with a discussion on ergodicity and generalizability. Although within-subject effects may in principle be separated from between-subject effects, the interpretation of these results rests on the intensity and the time interval of measurement and on the plausibility of the assumption of stationarity.

Highlights

  • Researchers in the field of network psychometrics (Marsman et al, 2018) study the estimation of multivariate statistical models in attempts to map out the complex interplay of interactions between variables

  • These results indicate a high level of stability in the inertia parameters as well as the contemporaneous edges

  • Edges that were included in the original analyses were likely to be included in the case-drop bootstrapped analyses, and mostly edges that were not included in the original analysis were less likely to be included in the case-drop bootstrapped analyses

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Summary

Introduction

Researchers in the field of network psychometrics (Marsman et al, 2018) study the estimation of multivariate statistical models in attempts to map out the complex interplay of interactions between variables. This field emerged from the network perspective on psychology (Borsboom, 2017; Cramer, Waldorp, van der Maas, & Borsboom, 2010)—departing from the latent variable model and instead conceptualizing observed variables (e.g., attitudes, symptoms, and moods) as causal agents in a complex interplay of psychological (and other) components. When time series of multiple subjects are available, a third GGM can be formed on the between-subject effects (relationships between stable means)— termed the between-subject network

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