International Journal of Data and Network Science (Jan 2023)

SEM-machine learning-based model for perusing the adoption of metaverse in higher education in UAE

  • Ahmad Aburayya,
  • Said A. Salloum,
  • Khaled Younis Alderbashi,
  • Fanar Shwedeh,
  • Yara Shaalan,
  • Raghad Alfaisal,
  • Sawsan JM Malaka ,
  • Khaled Shaalan

DOI
https://doi.org/10.5267/j.ijdns.2023.3.005
Journal volume & issue
Vol. 7, no. 2
pp. 667 – 676

Abstract

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The metaverse is an imaginary network of parallel universes. Using this technology might liven up dull lecture halls. By expanding synchronous communication into the "metaverse," many individuals may have meaningful conversations and exchange perspectives. This research focuses on finding out how medical students in the UAE feel about the metaverse system. The conceptual model incorporates elements from the Technology Acceptance Model (TAM), including perceived value and perceived ubiquity as adoption determinants. To test the validity of the suggested framework, a survey was developed and distributed to 369 full-time students at one of the universities in the United Arab Emirates (UAE). Machine learning (ML) and structural equation modeling using partial least squares (PLS-SEM) are used for data analysis. According to the results, the extent to which users saw value in and adoption of the metaverse system was a significant factor in whether or not they intended to participate. This study was helpful since it elucidated the relative significance of various healthcare components, allowing professionals to prioritize their efforts better.