Litcius/Paper detail

A structural equation modeling approach for modeling variability as a latent variable.

Yi Feng, Gregory R. Hancock

2022Psychological Methods48 citationsDOI

Abstract

Drawing upon recent developments in structural equation modeling, the current study presents an analytical framework for addressing research questions in which, rather than focusing on means, it is intraindividual (or intragroup) variability that is of direct research interest. Beyond merely serving as an alternative to existing multilevel modeling approaches, this framework allows for extensions to accommodate a variety of complex research scenarios by parameterizing variability as a latent variable that can in turn be embedded within a broader covariance and mean structure involving other observed and/or latent variables. The estimation procedures and parameter interpretation for the latent random variability models are discussed. The versatility of the proposed methods is demonstrated through four empirical examples. The Mplus, BUGS, and Stan model syntax for the illustrative examples are supplied to facilitate the application of the methods. (PsycInfo Database Record (c) 2024 APA, all rights reserved).

Topics & Concepts

Structural equation modelingLatent variableCovariancePsycINFOMultilevel modelLatent variable modelSyntaxComputer scienceVariable (mathematics)EconometricsInterpretation (philosophy)StatisticsData miningPsychologyMachine learningArtificial intelligenceMathematicsProgramming languagePolitical scienceMathematical analysisMEDLINELawAdvanced Statistical Modeling TechniquesMental Health Research TopicsDiverse Approaches in Healthcare and Education Studies