Estimation quality and required sample sizes in three-level contextual analysis models

dc.contributor.authorKerkhoff, Denny
dc.contributor.authorNussbeck, Fridtjof W.
dc.date.accessioned2023-08-08T09:14:31Z
dc.date.available2023-08-08T09:14:31Z
dc.date.issued2023-06-30
dc.description.abstractIn multilevel analysis, Level-1 predictors that also explain variance at a higher level are called contextual predictors. In the multilevel manifest covariate model, the Level-2 component is modeled as the average of the Level-1 predictor scores within a cluster. In the multilevel latent covariate model, the predictor is decomposed into two latent variables at Level-1 and Level-2. Performance conditions of these modeling approaches for three-level models are largely unexplored. We investigate the two approaches’ performance with respect to bias, coverage, and power in a three-level random intercept model. Results reveal differences in estimation quality and required sample sizes. We provide sampling recommendations for both approaches.
dc.description.versionpublisheddeu
dc.identifier.doi10.5964/meth.9775
dc.identifier.ppn1854642200
dc.identifier.urihttps://kops.uni-konstanz.de/handle/123456789/67529
dc.language.isoeng
dc.rightsAttribution 4.0 International
dc.rights.urihttp://creativecommons.org/licenses/by/4.0/
dc.subjecthierarchical linear model
dc.subjectthree-level model
dc.subjectsample sizes
dc.subjectparameter estimation bias
dc.subjectpower
dc.subjectcoverage
dc.subjectcontextual variable
dc.subject.ddc150
dc.titleEstimation quality and required sample sizes in three-level contextual analysis modelseng
dc.typeJOURNAL_ARTICLE
dspace.entity.typePublication
kops.citation.bibtex
@article{Kerkhoff2023-06-30Estim-67529,
  year={2023},
  doi={10.5964/meth.9775},
  title={Estimation quality and required sample sizes in three-level contextual analysis models},
  number={2},
  volume={19},
  issn={1614-1881},
  journal={Methodology},
  pages={133--151},
  author={Kerkhoff, Denny and Nussbeck, Fridtjof W.}
}
kops.citation.iso690KERKHOFF, Denny, Fridtjof W. NUSSBECK, 2023. Estimation quality and required sample sizes in three-level contextual analysis models. In: Methodology. Leibniz Institute for Psychology Information (ZPID). 2023, 19(2), pp. 133-151. ISSN 1614-1881. eISSN 1614-2241. Available under: doi: 10.5964/meth.9775deu
kops.citation.iso690KERKHOFF, Denny, Fridtjof W. NUSSBECK, 2023. Estimation quality and required sample sizes in three-level contextual analysis models. In: Methodology. Leibniz Institute for Psychology Information (ZPID). 2023, 19(2), pp. 133-151. ISSN 1614-1881. eISSN 1614-2241. Available under: doi: 10.5964/meth.9775eng
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kops.sourcefield.plainMethodology. Leibniz Institute for Psychology Information (ZPID). 2023, 19(2), pp. 133-151. ISSN 1614-1881. eISSN 1614-2241. Available under: doi: 10.5964/meth.9775deu
kops.sourcefield.plainMethodology. Leibniz Institute for Psychology Information (ZPID). 2023, 19(2), pp. 133-151. ISSN 1614-1881. eISSN 1614-2241. Available under: doi: 10.5964/meth.9775eng
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