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I tested the fit of a twoclass growth mixture model for a continuous outcome by looking at the tech13 output. The twosided multivariate skew test of fit gives a pvalue of 0.150 The twosided multivariate kurtosis test of fit gives a pvalue of 0.120 I read that obtaining low pvalues indicates that the model does not fit the data. (1) Can I conclude this test does not reject the twoclass model ? (2) I found little information on the SKtest. Where can I find these two manuscripts: * Muthén & Asparouhov (2002): Mixture testing using multivariate skewness and kurtosis * Wang & Brown (2002): Residual diagnostics for growth mixture models: examining the impact of a preventive intervention. (3) The SK testing should be preceded by outlier investigations. How do I perform such analyses ? 


1. Yes. 2. Muthen and Asparouhov is not yet available. I believe Wang and Brown will be coming out in JASA. You need to check with them about that. 3. There are many books that describe outlier detection and some programs do this automatically. Basically, it is just looking at univariate and bivariate distributions to identify extreme observations. 

Natalie posted on Thursday, June 09, 2011  12:30 pm



Can tech13 be used with a singleclass model to obtain multivariate skew and kurtosis statistics for the variables included in the model? In other words, I'm not interested in using these statistics for model selection. I just want to test multivariate normality. If one can do this, can small p values be interpreted as signifying departure from multivariate normality? Thank you, 


Yes and yes. 


Dear professors, Longtime no see! I am now reading the paper of Bauer and Curran(2003): Distributional Assumptions of Growth Mixture Models: Implications for Overextraction of Latent Trajectory Classes. They argue that finite mixture models not only identify latent classes, but also approximate intractable or complex distributions. They believe that nonnormality is required for the solution of the model to be nontrivial and is a sufficient condition for extracting multiple components. After reading their examples, I have some questions. (1)Within the current framework of Mplus, can we test the normality or nonnormality of the aggregate model? (2)In empirical studies, besides the information criterion and LRTs, should the nonnormality of the aggregate model be an essential condition or indicator of the necessity of multiple latent classes if the estimated number of classes is quite small? (3)In monte carlo simulation studies, may we be able to specify the different aggregate kurtosis and skewness ? If it can be done, I think that we can approximate the extent of normality or nonnormality level under which a finite mixture model with known number of classes can have nontrivial and significant solutions. 


A mixture model implies that the outcomes are nonnormal so I don't think you need to test for (non)normality. Instead, you can take the new approach of using nonnormal withinclass distributions as described in the paper on our website: Muthén, B. & Asparouhov T. (2015). Growth mixture modeling with nonnormal distributions. Statistics in Medicine, 34:6, 1041–1058. DOI: 10.1002/sim6388 Using this method indicates that the BauerCurran concerns were exaggerated. 


Thanks a lot! 

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