Score Predictor Factor Analysis: Reproducing Observed Covariances by Means of Factor Score Predictors

The non-diagonal elements of the observed covariances are more exactly reproduced by the factor loadings than by the model implied by the corresponding factor score predictors. This is a limitation to the validity of factor score predictors. It is therefore investigated whether it is possible to est...

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Main Authors: André Beauducel, Norbert Hilger
Format: Article
Language:English
Published: Frontiers Media S.A. 2019-08-01
Series:Frontiers in Psychology
Subjects:
Online Access:https://www.frontiersin.org/article/10.3389/fpsyg.2019.01895/full
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spelling doaj-f8475d491516409597d392ef623216892020-11-25T02:03:08ZengFrontiers Media S.A.Frontiers in Psychology1664-10782019-08-011010.3389/fpsyg.2019.01895461478Score Predictor Factor Analysis: Reproducing Observed Covariances by Means of Factor Score PredictorsAndré BeauducelNorbert HilgerThe non-diagonal elements of the observed covariances are more exactly reproduced by the factor loadings than by the model implied by the corresponding factor score predictors. This is a limitation to the validity of factor score predictors. It is therefore investigated whether it is possible to estimate factor loadings for which the model implied by the factor score predictors optimally reproduces the non-diagonal elements of the observed covariance matrix. Accordingly, loading estimates are proposed for which the model implied by the factor score predictors allows for a least-squares approximation of the non-diagonal elements of the observed covariance matrix. This estimation method is termed score predictor factor analysis and algebraically compared with Minres factor analysis as well as principal component analysis. A population-based and a sample-based simulation study was performed in order to compare score predictor factor analysis, Minres factor analysis, and principal component analysis. It turns out that the non-diagonal elements of the observed covariance matrix can more exactly be reproduced from the factor score predictors computed from score predictor factor analysis than from the factor score predictors computed from Minres factor analysis and from principal components.https://www.frontiersin.org/article/10.3389/fpsyg.2019.01895/fullfactor analysisMinresfactor score predictorsprincipal component analysisindeterminacy
collection DOAJ
language English
format Article
sources DOAJ
author André Beauducel
Norbert Hilger
spellingShingle André Beauducel
Norbert Hilger
Score Predictor Factor Analysis: Reproducing Observed Covariances by Means of Factor Score Predictors
Frontiers in Psychology
factor analysis
Minres
factor score predictors
principal component analysis
indeterminacy
author_facet André Beauducel
Norbert Hilger
author_sort André Beauducel
title Score Predictor Factor Analysis: Reproducing Observed Covariances by Means of Factor Score Predictors
title_short Score Predictor Factor Analysis: Reproducing Observed Covariances by Means of Factor Score Predictors
title_full Score Predictor Factor Analysis: Reproducing Observed Covariances by Means of Factor Score Predictors
title_fullStr Score Predictor Factor Analysis: Reproducing Observed Covariances by Means of Factor Score Predictors
title_full_unstemmed Score Predictor Factor Analysis: Reproducing Observed Covariances by Means of Factor Score Predictors
title_sort score predictor factor analysis: reproducing observed covariances by means of factor score predictors
publisher Frontiers Media S.A.
series Frontiers in Psychology
issn 1664-1078
publishDate 2019-08-01
description The non-diagonal elements of the observed covariances are more exactly reproduced by the factor loadings than by the model implied by the corresponding factor score predictors. This is a limitation to the validity of factor score predictors. It is therefore investigated whether it is possible to estimate factor loadings for which the model implied by the factor score predictors optimally reproduces the non-diagonal elements of the observed covariance matrix. Accordingly, loading estimates are proposed for which the model implied by the factor score predictors allows for a least-squares approximation of the non-diagonal elements of the observed covariance matrix. This estimation method is termed score predictor factor analysis and algebraically compared with Minres factor analysis as well as principal component analysis. A population-based and a sample-based simulation study was performed in order to compare score predictor factor analysis, Minres factor analysis, and principal component analysis. It turns out that the non-diagonal elements of the observed covariance matrix can more exactly be reproduced from the factor score predictors computed from score predictor factor analysis than from the factor score predictors computed from Minres factor analysis and from principal components.
topic factor analysis
Minres
factor score predictors
principal component analysis
indeterminacy
url https://www.frontiersin.org/article/10.3389/fpsyg.2019.01895/full
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AT norberthilger scorepredictorfactoranalysisreproducingobservedcovariancesbymeansoffactorscorepredictors
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