Literature DB >> 36097102

Covariate inclusion in factor mixture modeling: Evaluating one-step and three-step approaches under model misspecification and overfitting.

Yan Wang1, Chunhua Cao2, Eunsook Kim3.   

Abstract

Factor mixture modeling (FMM) has been increasingly used in behavioral and social sciences to examine unobserved population heterogeneity. Covariates (e.g., gender, race) are often included in FMM to help understand the formation and characterization of latent subgroups or classes. This Monte Carlo simulation study evaluated the performance of one-step and three-step approaches to covariate inclusion across three scenarios, i.e., correct specification (study 1), model misspecification (study 2), and model overfitting (study 3), in terms of direct covariate effects on factors. Results showed that the performance of these two approaches was comparable when class separation was large and the specification of covariate effect was correct. However, one-step FMM had better class enumeration than the three-step approach when class separation was poor, and was more robust to the misspecification or overfitting concerning direct covariate effects. Recommendations regarding covariate inclusion approaches are provided herein depending on class separation and sample size. Large sample size (1000 or more) and the use of sample size-adjusted BIC (saBIC) in class enumeration are recommended.
© 2022. The Psychonomic Society, Inc.

Entities:  

Keywords:  Covariate; Factor mixture model; Model misspecification; One-step; Three-step

Year:  2022        PMID: 36097102     DOI: 10.3758/s13428-022-01964-8

Source DB:  PubMed          Journal:  Behav Res Methods        ISSN: 1554-351X


  13 in total

1.  Heterogeneity in clinical presentations of posttraumatic stress disorder among medical patients: testing factor structure variation using factor mixture modeling.

Authors:  Jon D Elhai; James A Naifeh; David Forbes; Kendra C Ractliffe; Marijo Tamburrino
Journal:  J Trauma Stress       Date:  2011-08-10

2.  Investigating population heterogeneity with factor mixture models.

Authors:  Gitta H Lubke; Bengt Muthén
Journal:  Psychol Methods       Date:  2005-03

3.  A Comparison of Mixture Modeling Approaches in Latent Class Models With External Variables Under Small Samples.

Authors:  Unkyung No; Sehee Hong
Journal:  Educ Psychol Meas       Date:  2017-09-06       Impact factor: 2.821

4.  An evaluation of the use of covariates to assist in class enumeration in linear growth mixture modeling.

Authors:  Jinxiang Hu; Walter L Leite; Miao Gao
Journal:  Behav Res Methods       Date:  2017-06

5.  Investigating Approaches to Estimating Covariate Effects in Growth Mixture Modeling: A Simulation Study.

Authors:  Ming Li; Jeffrey R Harring
Journal:  Educ Psychol Meas       Date:  2016-06-15       Impact factor: 2.821

6.  The impact of total and partial inclusion or exclusion of active and inactive time invariant covariates in growth mixture models.

Authors:  Thierno M O Diallo; Alexandre J S Morin; HuiZhong Lu
Journal:  Psychol Methods       Date:  2016-09-19

7.  On Inclusion of Covariates for Class Enumeration of Growth Mixture Models.

Authors:  Libo Li; Yih-Ing Hser
Journal:  Multivariate Behav Res       Date:  2011       Impact factor: 5.923

8.  Constellations of dyadic relationship quality in stepfamilies: A factor mixture model.

Authors:  Todd M Jensen
Journal:  J Fam Psychol       Date:  2017-10-19

9.  Examining the latent structure of anxiety sensitivity in adolescents using factor mixture modeling.

Authors:  Nicholas P Allan; Laura MacPherson; Kevin C Young; Carl W Lejuez; Norman B Schmidt
Journal:  Psychol Assess       Date:  2014-04-21

10.  Factor mixture model of anxiety sensitivity and anxiety psychopathology vulnerability.

Authors:  Amit Bernstein; Timothy R Stickle; Norman B Schmidt
Journal:  J Affect Disord       Date:  2012-12-20       Impact factor: 4.839

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