Literature DB >> 31012738

Implementing continuous non-normal skewed distributions in latent growth mixture modeling: An assessment of specification errors and class enumeration.

Sarah Depaoli1, Sonja D Winter1, Keke Lai1, Kiero Guerra-Peña2.   

Abstract

Recent advances have allowed for modeling mixture components within latent growth modeling using robust, skewed mixture distributions rather than normal distributions. This feature adds flexibility in handling non-normality in longitudinal data, through manifest or latent variables, by directly modeling skewed or heavy-tailed latent classes rather than assuming a mixture of normal distributions. The aim of this study was to assess through simulation the potential under- or over-extraction of latent classes in a growth mixture model when underlying data follow either normal, skewed-normal, or skewed-t distributions. In order to assess this, we implement skewed-t, skewed-normal, and conventional normal (i.e., not skewed) forms of the growth mixture model. The skewed-t and skewed-normal versions of this model have only recently been implemented, and relatively little is known about their performance. Model comparison, fit, and classification of correctly specified and mis-specified models were assessed through various indices. Findings suggest that the accuracy of model comparison and fit measures are dependent on the type of (mis)specification, as well as the amount of class separation between the latent classes. A secondary simulation exposed computation and accuracy difficulties under some skewed modeling contexts. Implications of findings, recommendations for applied researchers, and future directions are discussed; a motivating example is presented using education data.

Keywords:  Skewed mixture distributions; latent growth curve modeling; latent growth mixture modeling; skewed-normal distribution; skewed-t distribution

Mesh:

Year:  2019        PMID: 31012738     DOI: 10.1080/00273171.2019.1593813

Source DB:  PubMed          Journal:  Multivariate Behav Res        ISSN: 0027-3171            Impact factor:   5.923


  3 in total

1.  Social Network Mediation Analysis: A Latent Space Approach.

Authors:  Haiyan Liu; Ick Hoon Jin; Zhiyong Zhang; Ying Yuan
Journal:  Psychometrika       Date:  2020-12-21       Impact factor: 2.500

2.  Growth Mixture Modeling With Nonnormal Distributions: Implications for Data Transformation.

Authors:  Yeji Nam; Sehee Hong
Journal:  Educ Psychol Meas       Date:  2020-12-08       Impact factor: 3.088

3.  Class enumeration false positive in skew-t family of continuous growth mixture models.

Authors:  Kiero Guerra-Peña; Zoilo Emilio García-Batista; Sarah Depaoli; Luis Eduardo Garrido
Journal:  PLoS One       Date:  2020-04-17       Impact factor: 3.240

  3 in total

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