Verknüpfungen

DOI

  • Steffen Zitzmann
  • Oliver Lüdtke
  • Alexander Robitzsch
  • Herbert W. Marsh
In many applications of multilevel modeling, group-level (L2) variables for assessing group-level effects are generated by aggregating variables from a lower level (L1). However, the observed group mean might not be a reliable measure of the unobserved true group mean. In this article, we propose a Bayesian approach for estimating a multilevel latent contextual model that corrects for measurement error and sampling error (i.e., sampling only a small number of L1 units from a L2 unit) when estimating group-level effects of aggregated L1 variables. Two simulation studies were conducted to compare the Bayesian approach with the maximum likelihood approach implemented in Mplus. The Bayesian approach showed fewer estimation problems (e.g., inadmissible solutions) and more accurate estimates of the group-level effect than the maximum likelihood approach under problematic conditions (i.e., small number of groups, predictor variable with a small intraclass correlation). An application from educational psychology is used to illustrate the different estimation approaches.
OriginalspracheEnglisch
ZeitschriftStructural Equation Modeling
Band23
Ausgabe5
Seiten (von - bis)661-679
Seitenumfang19
DOIs
ZustandVeröffentlicht - 2016

    Fachgebiete

  • Methodenforschung und -entwicklung

ID: 635022