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Detecting Mixtures From Structural Model Differences Using Latent Variable Mixture Modeling: A Comparison of Relative Model Fit Statistics
Authors:James M Henson  Steven P Reise  Kevin H Kim
Institution:1. Old Dominion University;2. University of California, Los Angeles;3. University of Pittsburgh
Abstract:The accuracy of structural model parameter estimates in latent variable mixture modeling was explored with a 3 (sample size) × 3 (exogenous latent mean difference) × 3 (endogenous latent mean difference) × 3 (correlation between factors) × 3 (mixture proportions) factorial design. In addition, the efficacy of several likelihood-based statistics (Akaike's Information Criterion AIC], Bayesian Information Ctriterion BIC], the sample-size adjusted BIC ssBIC], the consistent AIC CAIC], the Vuong-Lo-Mendell-Rubin adjusted likelihood ratio test aVLMR]), classification-based statistics (CLC classification likelihood information criterion], ICL-BIC integrated classification likelihood], normalized entropy criterion NEC], entropy), and distributional statistics (multivariate skew and kurtosis test) were examined to determine which statistics best recover the correct number of components. Results indicate that the structural parameters were recovered, but the model fit statistics were not exceedingly accurate. The ssBIC statistic was the most accurate statistic, and the CLC, ICL-BIC, and aVLMR showed limited utility. However, none of these statistics were accurate for small samples (n = 500).
Keywords:change  development  growth mixture model  latent growth models  longitudinal  mixed-effects models  nonlinear models
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