Literature DB >> 30937846

Detecting which variables alter component interpretation across multiple groups: A resampling-based method.

Sopiko Gvaladze1, Kim De Roover2,3, Francis Tuerlinckx2, Eva Ceulemans2.   

Abstract

In psychology, many studies measure the same variables in different groups. In the case of a large number of variables when a strong a priori idea about the underlying latent construct is lacking, researchers often start by reducing the variables to a few principal components in an exploratory way. Herewith, one often wants to evaluate whether the components represent the same construct in the different groups. To this end, it makes sense to remove outlying variables that have significantly different loadings on the extracted components across the groups, hampering equivalent interpretations of the components. Moreover, identifying such outlying variables is important when testing theories about which variables behave similarly or differently across groups. In this article, we first scrutinize the lower bound congruence method (LBCM; De Roover, Timmerman, & Ceulemans in Behavior Research Methods, 49, 216-229, 2017), which was recently proposed for solving the outlying-variable detection problem. LBCM investigates how Tucker's congruence between the loadings of the obtained cluster-loading matrices improves when specific variables are discarded. We show that LBCM has the tendency to output outlying variables that either are false positives or concern very small, and thus practically insignificant, loading differences. To address this issue, we present a new heuristic: the lower and resampled upper bound congruence method (LRUBCM). This method uses a resampling technique to obtain a sampling distribution for the congruence coefficient, under the hypothesis that no outlying variable is present. In a simulation study, we show that LRUBCM outperforms LBCM. Finally, we illustrate the use of the method by means of empirical data.

Entities:  

Keywords:  Measurment invariance; Multigroup data; Permutation test; Principal component analysis; Resampling; Tucker′s congruence

Mesh:

Year:  2020        PMID: 30937846     DOI: 10.3758/s13428-019-01222-4

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


  9 in total

1.  A clusterwise simultaneous component method for capturing within-cluster differences in component variances and correlations.

Authors:  Kim De Roover; Eva Ceulemans; Marieke E Timmerman; Patrick Onghena
Journal:  Br J Math Stat Psychol       Date:  2012-02-07       Impact factor: 3.380

2.  How to detect which variables are causing differences in component structure among different groups.

Authors:  Kim De Roover; Marieke E Timmerman; Eva Ceulemans
Journal:  Behav Res Methods       Date:  2017-02

3.  Selecting among three-mode principal component models of different types and complexities: a numerical convex hull based method.

Authors:  Eva Ceulemans; Henk A L Kiers
Journal:  Br J Math Stat Psychol       Date:  2006-05       Impact factor: 3.380

4.  How to perform multiblock component analysis in practice.

Authors:  Kim De Roover; Eva Ceulemans; Marieke E Timmerman
Journal:  Behav Res Methods       Date:  2012-03

5.  MultiLevel simultaneous component analysis: A computational shortcut and software package.

Authors:  Eva Ceulemans; Tom F Wilderjans; Henk A L Kiers; Marieke E Timmerman
Journal:  Behav Res Methods       Date:  2016-09

6.  CHull: a generic convex-hull-based model selection method.

Authors:  Tom F Wilderjans; Eva Ceulemans; Kristof Meers
Journal:  Behav Res Methods       Date:  2013-03

7.  Subspace K-means clustering.

Authors:  Marieke E Timmerman; Eva Ceulemans; Kim De Roover; Karla Van Leeuwen
Journal:  Behav Res Methods       Date:  2013-12

8.  A flexible framework for sparse simultaneous component based data integration.

Authors:  Katrijn Van Deun; Tom F Wilderjans; Robert A van den Berg; Anestis Antoniadis; Iven Van Mechelen
Journal:  BMC Bioinformatics       Date:  2011-11-15       Impact factor: 3.169

9.  What's hampering measurement invariance: detecting non-invariant items using clusterwise simultaneous component analysis.

Authors:  Kim De Roover; Marieke E Timmerman; Jozefien De Leersnyder; Batja Mesquita; Eva Ceulemans
Journal:  Front Psychol       Date:  2014-06-20
  9 in total

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