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The Sampling Ratio in Multilevel Structural Equation Models: Considerations to Inform Study Design.

Joseph M KushTimothy R KonoldCatherine P Bradshaw
Published in: Educational and psychological measurement (2021)
Multilevel structural equation modeling (MSEM) allows researchers to model latent factor structures at multiple levels simultaneously by decomposing within- and between-group variation. Yet the extent to which the sampling ratio (i.e., proportion of cases sampled from each group) influences the results of MSEM models remains unknown. This article explores how variation in the sampling ratio in MSEM affects the measurement of Level 2 (L2) latent constructs. Specifically, we investigated whether the sampling ratio is related to bias and variability in aggregated L2 construct measurement and estimation in the context of doubly latent MSEM models utilizing a two-step Monte Carlo simulation study. Findings suggest that while lower sampling ratios were related to increased bias, standard errors, and root mean square error, the overall size of these errors was negligible, making the doubly latent model an appealing choice for researchers. An applied example using empirical survey data is further provided to illustrate the application and interpretation of the model. We conclude by considering the implications of various sampling ratios on the design of MSEM studies, with a particular focus on educational research.
Keyphrases
  • monte carlo
  • cross sectional
  • machine learning
  • electronic health record
  • mass spectrometry
  • adverse drug
  • big data
  • deep learning
  • case control