Cross-level invariance in multilevel factor models
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| Publication date | 07-2019 |
| Journal | Structural Equation Modeling |
| Volume | Issue number | 26 | 4 |
| Pages (from-to) | 607-622 |
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| Abstract |
When modeling latent variables at multiple levels, it is important to consider the meaning of the latent variables at the different levels. If a higher-level common factor represents the aggregated version of a lower-level factor, the associated factor loadings will be equal across levels. However, many researchers do not consider cross-level invariance constraints in their research. Not applying these constraints when in fact they are appropriate leads to overparameterized models, and associated convergence and estimation problems. This simulation study used a two-level mediation model on common factors to show that when factor loadings are equal in the population, not applying cross-level invariance constraints leads to more estimation problems and smaller true positive rates. Some directions for future research on cross-level invariance in MLSEM are discussed.
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| Document type | Article |
| Language | English |
| Published at | https://doi.org/10.1080/10705511.2018.1534205 |
| Downloads |
AcceptedVersion-Jak2018Crosslevelinvariance
(Accepted author manuscript)
Cross-Level Invariance in Multilevel Factor Models
(Final published version)
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