Gain more insight from common latent factor in structural equation modeling
There is a great deal of evidence that method bias is really sure influences item validities, measurement error, correlation and covariance between latent constructs and thus leading the researchers to erroneous conclusion due to inflation or deflation during hypothesis testing. To remedy this, th...
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my-unisza-ir.48212022-01-18T08:40:37Z http://eprints.unisza.edu.my/4821/ Gain more insight from common latent factor in structural equation modeling Wan Mohamad Asyraf, Wan Afthanorhan Izzat, Ismail Nik Hazimi, Mohammed Foziah Zainudin, Awang HA Statistics HD61 Risk Management There is a great deal of evidence that method bias is really sure influences item validities, measurement error, correlation and covariance between latent constructs and thus leading the researchers to erroneous conclusion due to inflation or deflation during hypothesis testing. To remedy this, the study provides a guideline to minimize the method bias in the context of structural equation modeling employing the covariance method (CB-SEM) using medical tourism model. A practical approach is illustrated for the identification of method bias based on the new construct namely common latent factor. Using this latent construct, we managed to identify which item has potential to permeate more variance from common latent factor. Nevertheless, we figure out that the method bias is do not exist in our developed model. Therefore, this measurement model is appropriate for structural model in order to achieve the research hypotheses. We hope that this discussion will help the researchers anticipate which items are likely exposed on method bias before proceed to advance modeling. 2021 Conference or Workshop Item PeerReviewed text en http://eprints.unisza.edu.my/4821/1/FH03-FPP-20-47929.pdf text en http://eprints.unisza.edu.my/4821/2/FH03-FPP-21-51992.pdf Wan Mohamad Asyraf, Wan Afthanorhan and Izzat, Ismail and Nik Hazimi, Mohammed Foziah and Zainudin, Awang (2021) Gain more insight from common latent factor in structural equation modeling. In: 1st International Conference on Advanced Sciences and Engineering, 18 Apr 2020, Virtual Conference. |
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HA Statistics HD61 Risk Management Wan Mohamad Asyraf, Wan Afthanorhan Izzat, Ismail Nik Hazimi, Mohammed Foziah Zainudin, Awang Gain more insight from common latent factor in structural equation modeling |
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There is a great deal of evidence that method bias is really sure influences item validities, measurement error,
correlation and covariance between latent constructs and thus leading the researchers to erroneous conclusion due to
inflation or deflation during hypothesis testing. To remedy this, the study provides a guideline to minimize the
method bias in the context of structural equation modeling employing the covariance method (CB-SEM) using
medical tourism model. A practical approach is illustrated for the identification of method bias based on the new
construct namely common latent factor. Using this latent construct, we managed to identify which item has potential
to permeate more variance from common latent factor. Nevertheless, we figure out that the method bias is do not
exist in our developed model. Therefore, this measurement model is appropriate for structural model in order to
achieve the research hypotheses. We hope that this discussion will help the researchers anticipate which items are
likely exposed on method bias before proceed to advance modeling. |
format |
Conference or Workshop Item |
author |
Wan Mohamad Asyraf, Wan Afthanorhan Izzat, Ismail Nik Hazimi, Mohammed Foziah Zainudin, Awang |
author_facet |
Wan Mohamad Asyraf, Wan Afthanorhan Izzat, Ismail Nik Hazimi, Mohammed Foziah Zainudin, Awang |
author_sort |
Wan Mohamad Asyraf, Wan Afthanorhan |
title |
Gain more insight from common latent factor in structural equation modeling |
title_short |
Gain more insight from common latent factor in structural equation modeling |
title_full |
Gain more insight from common latent factor in structural equation modeling |
title_fullStr |
Gain more insight from common latent factor in structural equation modeling |
title_full_unstemmed |
Gain more insight from common latent factor in structural equation modeling |
title_sort |
gain more insight from common latent factor in structural equation modeling |
publishDate |
2021 |
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http://eprints.unisza.edu.my/4821/1/FH03-FPP-20-47929.pdf http://eprints.unisza.edu.my/4821/2/FH03-FPP-21-51992.pdf http://eprints.unisza.edu.my/4821/ |
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