Literature DB >> 26794916

Distinguishing Between Latent Classes and Continuous Factors: Resolution by Maximum Likelihood?

Gitta Lubke, Michael C Neale.   

Abstract

Latent variable models exist with continuous, categorical, or both types of latent variables. The role of latent variables is to account for systematic patterns in the observed responses. This article has two goals: (a) to establish whether, based on observed responses, it can be decided that an underlying latent variable is continuous or categorical, and (b) to quantify the effect of sample size and class proportions on making this distinction. Latent variable models with categorical, continuous, or both types of latent variables are fitted to simulated data generated under different types of latent variable models. If an analysis is restricted to fitting continuous latent variable models assuming a homogeneous population and data stem from a heterogeneous population, overextraction of factors may occur. Similarly, if an analysis is restricted to fitting latent class models, overextraction of classes may occur if covariation between observed variables is due to continuous factors. For the data-generating models used in this study, comparing the fit of different exploratory factor mixture models usually allows one to distinguish correctly between categorical and/or continuous latent variables. Correct model choice depends on class separation and within-class sample size.

Year:  2006        PMID: 26794916     DOI: 10.1207/s15327906mbr4104_4

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


  58 in total

1.  Latent profiles of executive functioning in healthy young adults: evidence of individual differences in hemispheric asymmetry.

Authors:  Holly K Rau; Yana Suchy; Jonathan E Butner; Paula G Williams
Journal:  Psychol Res       Date:  2015-09-26

2.  Categories and Dimensions Advancing Psychological Science Through the Study of Latent Structure.

Authors:  John Ruscio; Ayelet Meron Ruscio
Journal:  Curr Dir Psychol Sci       Date:  2008-06-28

3.  Model Selection for Multilevel Mixture Rasch Models.

Authors:  Sedat Sen; Allan S Cohen; Seock-Ho Kim
Journal:  Appl Psychol Meas       Date:  2018-06-07

4.  A Longitudinal Study on Multidimensional Resilience to Physical and Psychosocial Stress in Elderly Mexicans.

Authors:  Jan Höltge; Rafael Samper-Ternent; Carmen García-Peña; Luis Miguel Gutiérrez-Robledo
Journal:  J Aging Health       Date:  2020-06-30

5.  Using Factor Mixture Models to Evaluate the Type A/B Classification of Alcohol Use Disorders in a Heterogeneous Treatment Sample.

Authors:  Tom Hildebrandt; Elizabeth E Epstein; Robyn Sysko; Donald A Bux
Journal:  Alcohol Clin Exp Res       Date:  2017-03-30       Impact factor: 3.455

6.  Comparison of Relative Fit Indices for Diagnostic Model Selection.

Authors:  Sedat Sen; Laine Bradshaw
Journal:  Appl Psychol Meas       Date:  2017-03-08

7.  The Impact of Ignoring the Level of Nesting Structure in Nonparametric Multilevel Latent Class Models.

Authors:  Jungkyu Park; Hsiu-Ting Yu
Journal:  Educ Psychol Meas       Date:  2015-11-26       Impact factor: 2.821

8.  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

9.  A latent profile analysis of intimate partner victimization and aggression and examination of between-class differences in psychopathology symptoms and risky behaviors.

Authors:  Nicole H Weiss; Katherine L Dixon-Gordon; Courtney Peasant; Véronique Jaquier; Clinesha Johnson; Tami P Sullivan
Journal:  Psychol Trauma       Date:  2016-10-13

10.  Multiple Health Risk Behaviors in Young Adult Smokers: Stages of Change and Stability over Time.

Authors:  Danielle E Ramo; Johannes Thrul; Erin A Vogel; Kevin Delucchi; Judith J Prochaska
Journal:  Ann Behav Med       Date:  2020-01-24
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