The Performance of Regularization Technique in Assessing Reliability and Validity of the Constructs in Structural Equation Modeling: Application in Breast Cancer Awareness Research

Introduction: In structural equation modeling (SEM), among the desirable requirements in the measurement model are the reliability and validity of the constructs. The average variance extracted (AVE) provides a numerical measure of the overall validity of each construct in the model. Meanwhile, comp...

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Published in:Malaysian Journal of Medicine and Health Sciences
Main Author: Zulkifli N.R.; Zin H.M.
Format: Article
Language:English
Published: Universiti Putra Malaysia Press 2024
Online Access:https://www.scopus.com/inward/record.uri?eid=2-s2.0-85209885673&doi=10.47836%2fmjmhs.20.s8.15&partnerID=40&md5=4760d256a187d9c35f32f9fdcb59ec14
id 2-s2.0-85209885673
spelling 2-s2.0-85209885673
Zulkifli N.R.; Zin H.M.
The Performance of Regularization Technique in Assessing Reliability and Validity of the Constructs in Structural Equation Modeling: Application in Breast Cancer Awareness Research
2024
Malaysian Journal of Medicine and Health Sciences
20

10.47836/mjmhs.20.s8.15
https://www.scopus.com/inward/record.uri?eid=2-s2.0-85209885673&doi=10.47836%2fmjmhs.20.s8.15&partnerID=40&md5=4760d256a187d9c35f32f9fdcb59ec14
Introduction: In structural equation modeling (SEM), among the desirable requirements in the measurement model are the reliability and validity of the constructs. The average variance extracted (AVE) provides a numerical measure of the overall validity of each construct in the model. Meanwhile, composite reliability (CR) reflects the internal consistency reliability of the items under each construct. Materials and methods: In this study, the existing estimator in SEM namely unweighted least squares (ULS) has been used for nonnormal data in SEM. However, the method is seen less efficient as the method leads to improper solutions like unique variance which introduces some level of bias, hence affecting the reliability and validity of the constructs. Therefore, the regularized unweighted least squares (ULS), a new approach of regularization is introduced in this study. Utilizing 300 samples of breast cancer awareness data, the analysis was carried out using “lavaan” package in R programming Environment. Results: Regularized ULS consistently yields higher CR and AVE values, enhancing the reliability and validity of measurement instruments. Conclusion: Besides assisting researchers in achieving the reliability and validity of a construct, the findings of this study can aid survey-based researchers to generate a more reliable model. The findings indicate that employing regularized ULS estimation allows for the retention of a greater number of items or questions within the respective construct in the Malay Version of the Breast Cancer Awareness instrument. This proves to be invaluable in validating the factor structure through confirmatory factor analysis. © 2024 Universiti Putra Malaysia Press. All rights reserved.
Universiti Putra Malaysia Press
16758544
English
Article

author Zulkifli N.R.; Zin H.M.
spellingShingle Zulkifli N.R.; Zin H.M.
The Performance of Regularization Technique in Assessing Reliability and Validity of the Constructs in Structural Equation Modeling: Application in Breast Cancer Awareness Research
author_facet Zulkifli N.R.; Zin H.M.
author_sort Zulkifli N.R.; Zin H.M.
title The Performance of Regularization Technique in Assessing Reliability and Validity of the Constructs in Structural Equation Modeling: Application in Breast Cancer Awareness Research
title_short The Performance of Regularization Technique in Assessing Reliability and Validity of the Constructs in Structural Equation Modeling: Application in Breast Cancer Awareness Research
title_full The Performance of Regularization Technique in Assessing Reliability and Validity of the Constructs in Structural Equation Modeling: Application in Breast Cancer Awareness Research
title_fullStr The Performance of Regularization Technique in Assessing Reliability and Validity of the Constructs in Structural Equation Modeling: Application in Breast Cancer Awareness Research
title_full_unstemmed The Performance of Regularization Technique in Assessing Reliability and Validity of the Constructs in Structural Equation Modeling: Application in Breast Cancer Awareness Research
title_sort The Performance of Regularization Technique in Assessing Reliability and Validity of the Constructs in Structural Equation Modeling: Application in Breast Cancer Awareness Research
publishDate 2024
container_title Malaysian Journal of Medicine and Health Sciences
container_volume 20
container_issue
doi_str_mv 10.47836/mjmhs.20.s8.15
url https://www.scopus.com/inward/record.uri?eid=2-s2.0-85209885673&doi=10.47836%2fmjmhs.20.s8.15&partnerID=40&md5=4760d256a187d9c35f32f9fdcb59ec14
description Introduction: In structural equation modeling (SEM), among the desirable requirements in the measurement model are the reliability and validity of the constructs. The average variance extracted (AVE) provides a numerical measure of the overall validity of each construct in the model. Meanwhile, composite reliability (CR) reflects the internal consistency reliability of the items under each construct. Materials and methods: In this study, the existing estimator in SEM namely unweighted least squares (ULS) has been used for nonnormal data in SEM. However, the method is seen less efficient as the method leads to improper solutions like unique variance which introduces some level of bias, hence affecting the reliability and validity of the constructs. Therefore, the regularized unweighted least squares (ULS), a new approach of regularization is introduced in this study. Utilizing 300 samples of breast cancer awareness data, the analysis was carried out using “lavaan” package in R programming Environment. Results: Regularized ULS consistently yields higher CR and AVE values, enhancing the reliability and validity of measurement instruments. Conclusion: Besides assisting researchers in achieving the reliability and validity of a construct, the findings of this study can aid survey-based researchers to generate a more reliable model. The findings indicate that employing regularized ULS estimation allows for the retention of a greater number of items or questions within the respective construct in the Malay Version of the Breast Cancer Awareness instrument. This proves to be invaluable in validating the factor structure through confirmatory factor analysis. © 2024 Universiti Putra Malaysia Press. All rights reserved.
publisher Universiti Putra Malaysia Press
issn 16758544
language English
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