Distributional Assumptions of Growth Mixture Models: Implications for Overextraction of Latent Trajectory Classes.
North Carolina State University · University of North Carolina at Chapel Hill
Abstract
Growth mixture models are often used to determine if subgroups exist within the population that follow qualitatively distinct developmental trajectories. However, statistical theory developed for finite normal mixture models suggests that latent trajectory classes can be estimated even in the absence of population heterogeneity if the distribution of the repeated measures is nonnormal. By drawing on this theory, this article demonstrates that multiple trajectory classes can be estimated and appear optimal for nonnormal data even when only 1 group exists in the population. Further, the within-class parameter estimates obtained from these models are largely uninterpretable. Significant predictive relationships…
Citation impact
- FWCI
- 9.15
- Percentile
- 100%
- References
- 79
Authors
2Topics & keywords
- Spurious relationship
- Trajectory
- Econometrics
- Mixture model
- Population
- Statistics
- Latent class model
- Class (philosophy)