| Literature DB >> 28757790 |
Patrick J Curran1, Veronica Cole1, Daniel J Bauer1, Andrea M Hussong1, Nisha Gottfredson1.
Abstract
A challenge facing nearly all studies in the psychological sciences is how to best combine multiple items into a valid and reliable score to be used in subsequent modelling. The most ubiquitous method is to compute a mean of items, but more contemporary approaches use various forms of latent score estimation. Regardless of approach, outside of large-scale testing applications, scoring models rarely include background characteristics to improve score quality. The current paper used a Monte Carlo simulation design to study score quality for different psychometric models that did and did not include covariates across levels of sample size, number of items, and degree of measurement invariance. The inclusion of covariates improved score quality for nearly all design factors, and in no case did the covariates degrade score quality relative to not considering the influences at all. Results suggest that the inclusion of observed covariates can improve factor score estimation.Entities:
Keywords: Factor score estimation; factor analysis; integrative data analysis; item response theory; moderated nonlinear factor analysis
Year: 2016 PMID: 28757790 PMCID: PMC5526637 DOI: 10.1080/10705511.2016.1220839
Source DB: PubMed Journal: Struct Equ Modeling ISSN: 1070-5511 Impact factor: 6.125