Publication | Closed Access
Analyzing data from experimental studies: A latent variable structural equation modeling approach.
632
Citations
40
References
1998
Year
Family InvolvementFactor ModelsEducationPsychometricsPsychologySocial SciencesDevelopmental PsychologySem ProceduresFactor AnalysisLatent VariablesStatisticsStructural Equation ModelingLatent Variable MethodsBehavioral SciencesSocial ImpactLatent Variable ModelExperimental PsychologyChild DevelopmentConfirmatory ResearchStructural ModelingExperimental StudiesInteraction Effect
This article illustrates the use of structural equation modeling (SEM) procedures with latent variables to analyze data from experimental studies. These procedures allow the researcher to remove the biasing effects of random and correlated measurement error on the outcomes of the experiment and to examine processes that may account for changes in the outcome variables that are observed. Analyses of data from a Project Family study, an experimental intervention project with rural families that strives to improve parenting skills, are presented to illustrate the use of these modeling procedures. Issues that arise in applying SEM procedures, such as sample size and distributional characteristics of the measures, are discussed.
| Year | Citations | |
|---|---|---|
Page 1
Page 1