Literature DB >> 34267396

A Comparison of Label Switching Algorithms in the Context of Growth Mixture Models.

Kristina R Cassiday1, Youngmi Cho2, Jeffrey R Harring1.   

Abstract

Simulation studies involving mixture models inevitably aggregate parameter estimates and other output across numerous replications. A primary issue that arises in these methodological investigations is label switching. The current study compares several label switching corrections that are commonly used when dealing with mixture models. A growth mixture model is used in this simulation study, and the design crosses three manipulated variables-number of latent classes, latent class probabilities, and class separation, yielding a total of 18 conditions. Within each of these conditions, the accuracy of a priori identifiability constraints, a priori training of the algorithm, and four post hoc algorithms developed by Tueller et al.; Cho; Stephens; and Rodriguez and Walker are tested to determine their classification accuracy. Findings reveal that, of all a priori methods, training of the algorithm leads to the most accurate classification under all conditions. In a case where an a priori algorithm is not selected, Rodriguez and Walker's algorithm is an excellent choice if interested specifically in aggregating class output without consideration as to whether the classes are accurately ordered. Using any of the post hoc algorithms tested yields improvement over baseline accuracy and is most effective under two-class models when class separation is high. This study found that if the class constraint algorithm was used a priori, it should be combined with a post hoc algorithm for accurate classification.
© The Author(s) 2020.

Entities:  

Keywords:  growth mixture model; label switching; mixture modeling; simulation; training data set

Year:  2020        PMID: 34267396      PMCID: PMC8243206          DOI: 10.1177/0013164420970614

Source DB:  PubMed          Journal:  Educ Psychol Meas        ISSN: 0013-1644            Impact factor:   3.088


  6 in total

1.  Local solutions in the estimation of growth mixture models.

Authors:  John R Hipp; Daniel J Bauer
Journal:  Psychol Methods       Date:  2006-03

2.  Fitting a linear-linear piecewise growth mixture model with unknown knots: A comparison of two common approaches to inference.

Authors:  Nidhi Kohli; John Hughes; Chun Wang; Cengiz Zopluoglu; Mark L Davison
Journal:  Psychol Methods       Date:  2015-04-13

3.  Bayesian structural equation modeling: a more flexible representation of substantive theory.

Authors:  Bengt Muthén; Tihomir Asparouhov
Journal:  Psychol Methods       Date:  2012-09

4.  Mixture class recovery in GMM under varying degrees of class separation: frequentist versus Bayesian estimation.

Authors:  Sarah Depaoli
Journal:  Psychol Methods       Date:  2013-03-25

5.  OpenMx 2.0: Extended Structural Equation and Statistical Modeling.

Authors:  Michael C Neale; Michael D Hunter; Joshua N Pritikin; Mahsa Zahery; Timothy R Brick; Robert M Kirkpatrick; Ryne Estabrook; Timothy C Bates; Hermine H Maes; Steven M Boker
Journal:  Psychometrika       Date:  2015-01-27       Impact factor: 2.500

6.  Latent growth curves within developmental structural equation models.

Authors:  J J McArdle; D Epstein
Journal:  Child Dev       Date:  1987-02
  6 in total

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