The Impact of Partial Measurement Invariance on Testing Moderation for Single and Multi-Level Data

Moderation effect is a commonly used concept in the field of social and behavioral science. Several studies regarding the implication of moderation effects have been done; however, little is known about how partial measurement invariance influences the properties of tests for moderation effects when...

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Main Authors: Yu-Yu Hsiao, Mark H. C. Lai
Format: Article
Language:English
Published: Frontiers Media S.A. 2018-05-01
Series:Frontiers in Psychology
Subjects:
Online Access:http://journal.frontiersin.org/article/10.3389/fpsyg.2018.00740/full
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spelling doaj-d13d5c6b2090448db8c97d7e5062553a2020-11-24T23:14:26ZengFrontiers Media S.A.Frontiers in Psychology1664-10782018-05-01910.3389/fpsyg.2018.00740298874The Impact of Partial Measurement Invariance on Testing Moderation for Single and Multi-Level DataYu-Yu Hsiao0Mark H. C. Lai1Center on Alcoholism, Substance Abuse, and Addictions, University of New Mexico, Albuquerque, NM, United StatesSchool of Education, University of Cincinnati, Cincinnati, OH, United StatesModeration effect is a commonly used concept in the field of social and behavioral science. Several studies regarding the implication of moderation effects have been done; however, little is known about how partial measurement invariance influences the properties of tests for moderation effects when categorical moderators were used. Additionally, whether the impact is the same across single and multilevel data is still unknown. Hence, the purpose of the present study is twofold: (a) To investigate the performance of the moderation test in single-level studies when measurement invariance does not hold; (b) To examine whether unique features of multilevel data, such as intraclass correlation (ICC) and number of clusters, influence the effect of measurement non-invariance on the performance of tests for moderation. Simulation results indicated that falsely assuming measurement invariance lead to biased estimates, inflated Type I error rates, and more gain or more loss in power (depends on simulation conditions) for the test of moderation effects. Such patterns were more salient as sample size and the number of non-invariant items increase for both single- and multi-level data. With multilevel data, the cluster size seemed to have a larger impact than the number of clusters when falsely assuming measurement invariance in the moderation estimation. ICC was trivially related to the moderation estimates. Overall, when testing moderation effects with categorical moderators, employing a model that accounts for the measurement (non)invariance structure of the predictor and/or the outcome is recommended.http://journal.frontiersin.org/article/10.3389/fpsyg.2018.00740/fullmeasurement equivalencemeasurement invariancemoderationinteraction effectsstructural equation modelinghierarchical linear modeling
collection DOAJ
language English
format Article
sources DOAJ
author Yu-Yu Hsiao
Mark H. C. Lai
spellingShingle Yu-Yu Hsiao
Mark H. C. Lai
The Impact of Partial Measurement Invariance on Testing Moderation for Single and Multi-Level Data
Frontiers in Psychology
measurement equivalence
measurement invariance
moderation
interaction effects
structural equation modeling
hierarchical linear modeling
author_facet Yu-Yu Hsiao
Mark H. C. Lai
author_sort Yu-Yu Hsiao
title The Impact of Partial Measurement Invariance on Testing Moderation for Single and Multi-Level Data
title_short The Impact of Partial Measurement Invariance on Testing Moderation for Single and Multi-Level Data
title_full The Impact of Partial Measurement Invariance on Testing Moderation for Single and Multi-Level Data
title_fullStr The Impact of Partial Measurement Invariance on Testing Moderation for Single and Multi-Level Data
title_full_unstemmed The Impact of Partial Measurement Invariance on Testing Moderation for Single and Multi-Level Data
title_sort impact of partial measurement invariance on testing moderation for single and multi-level data
publisher Frontiers Media S.A.
series Frontiers in Psychology
issn 1664-1078
publishDate 2018-05-01
description Moderation effect is a commonly used concept in the field of social and behavioral science. Several studies regarding the implication of moderation effects have been done; however, little is known about how partial measurement invariance influences the properties of tests for moderation effects when categorical moderators were used. Additionally, whether the impact is the same across single and multilevel data is still unknown. Hence, the purpose of the present study is twofold: (a) To investigate the performance of the moderation test in single-level studies when measurement invariance does not hold; (b) To examine whether unique features of multilevel data, such as intraclass correlation (ICC) and number of clusters, influence the effect of measurement non-invariance on the performance of tests for moderation. Simulation results indicated that falsely assuming measurement invariance lead to biased estimates, inflated Type I error rates, and more gain or more loss in power (depends on simulation conditions) for the test of moderation effects. Such patterns were more salient as sample size and the number of non-invariant items increase for both single- and multi-level data. With multilevel data, the cluster size seemed to have a larger impact than the number of clusters when falsely assuming measurement invariance in the moderation estimation. ICC was trivially related to the moderation estimates. Overall, when testing moderation effects with categorical moderators, employing a model that accounts for the measurement (non)invariance structure of the predictor and/or the outcome is recommended.
topic measurement equivalence
measurement invariance
moderation
interaction effects
structural equation modeling
hierarchical linear modeling
url http://journal.frontiersin.org/article/10.3389/fpsyg.2018.00740/full
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