Dynamics of ai adoption among students in higher education: drivers, barriers, and negative impacts - a statistical and DEMATEL analysis / Azizah Abd Rahman, Iffah Najihah Razali and Irfan Suri Mohd Nazri

As AI continues to revolutionize various sectors, its adoption among students in higher education has gained significant attention.AI offers the promise of customized learning, dynamic assessments, and meaningful interactions, presenting exciting opportunities for online, mobile, and blended learnin...

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Main Authors: Abd Rahman, Azizah, Razali, Iffah Najihah, Mohd Nazri, Irfan Suri
Format: Student Project
Language:English
Published: 2023
Subjects:
Online Access:https://ir.uitm.edu.my/id/eprint/93631/1/93631.pdf
https://ir.uitm.edu.my/id/eprint/93631/
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spelling my.uitm.ir.936312024-04-20T01:05:16Z https://ir.uitm.edu.my/id/eprint/93631/ Dynamics of ai adoption among students in higher education: drivers, barriers, and negative impacts - a statistical and DEMATEL analysis / Azizah Abd Rahman, Iffah Najihah Razali and Irfan Suri Mohd Nazri Abd Rahman, Azizah Razali, Iffah Najihah Mohd Nazri, Irfan Suri Dissertations, Academic. Preparation of theses As AI continues to revolutionize various sectors, its adoption among students in higher education has gained significant attention.AI offers the promise of customized learning, dynamic assessments, and meaningful interactions, presenting exciting opportunities for online, mobile, and blended learning environments. However, as AI adoption grows, it becomes crucial to explore the key drivers, barriers, and potential negative impacts to make informed decisions and foster responsible integration. The problem statement identifies the lack of a comprehensive understanding of the influencing factors, the need for an accurate predictive model, and the lack of understanding of interdependencies and causal relationships. To address the aforementioned problem statement, this research objective is to explore the key drivers, barriers, and negative impacts of AI adoption in higher education using Descriptive Analysis (DS). Understanding these drivers, barriers and negative impacts is vital to tailor strategies that effectively promote AI integration. Next research objective is to model the key drivers, barriers, and negative impact of AI adoption in higher education using Binary Linear Regression (BLR). This approach allows for quantitative analysis of the relationships between identified factors and the level of AI adoption, providing valuable insights into their significance. Last research objective is to identify the casual relationship of the key drives, barriers, and negative impact of AI adoption in higher education using the DEMATEL approach. Through DEMATEL analysis, this research will uncover the interdependencies and directional relationships among these factors, providing a deeper understanding of how they influence each other and contribute to the overall dynamics of AI adoption in the higher education setting. The methodology involves statistical analysis with descriptive analysis and binary linear regression, as well as DEMATEL. Findings reveal that accessibility and customization drive AI adoption, while traditional learning preferences pose a barrier, and privacy and security issues are significant concerns. To ensure the successful and responsible integration of AI in higher education, the following recommendations are proposed which are it is crucial for emphasize investing in infrastructure and comprehensive training for faculty, prioritizing ethical considerations with clear guidelines and policies, and viewing AI as a collaborative tool that enhances educators' capabilities. 2023 Student Project NonPeerReviewed text en https://ir.uitm.edu.my/id/eprint/93631/1/93631.pdf Dynamics of ai adoption among students in higher education: drivers, barriers, and negative impacts - a statistical and DEMATEL analysis / Azizah Abd Rahman, Iffah Najihah Razali and Irfan Suri Mohd Nazri. (2023) [Student Project] (Unpublished)
institution Universiti Teknologi Mara
building Tun Abdul Razak Library
collection Institutional Repository
continent Asia
country Malaysia
content_provider Universiti Teknologi Mara
content_source UiTM Institutional Repository
url_provider http://ir.uitm.edu.my/
language English
topic Dissertations, Academic. Preparation of theses
spellingShingle Dissertations, Academic. Preparation of theses
Abd Rahman, Azizah
Razali, Iffah Najihah
Mohd Nazri, Irfan Suri
Dynamics of ai adoption among students in higher education: drivers, barriers, and negative impacts - a statistical and DEMATEL analysis / Azizah Abd Rahman, Iffah Najihah Razali and Irfan Suri Mohd Nazri
description As AI continues to revolutionize various sectors, its adoption among students in higher education has gained significant attention.AI offers the promise of customized learning, dynamic assessments, and meaningful interactions, presenting exciting opportunities for online, mobile, and blended learning environments. However, as AI adoption grows, it becomes crucial to explore the key drivers, barriers, and potential negative impacts to make informed decisions and foster responsible integration. The problem statement identifies the lack of a comprehensive understanding of the influencing factors, the need for an accurate predictive model, and the lack of understanding of interdependencies and causal relationships. To address the aforementioned problem statement, this research objective is to explore the key drivers, barriers, and negative impacts of AI adoption in higher education using Descriptive Analysis (DS). Understanding these drivers, barriers and negative impacts is vital to tailor strategies that effectively promote AI integration. Next research objective is to model the key drivers, barriers, and negative impact of AI adoption in higher education using Binary Linear Regression (BLR). This approach allows for quantitative analysis of the relationships between identified factors and the level of AI adoption, providing valuable insights into their significance. Last research objective is to identify the casual relationship of the key drives, barriers, and negative impact of AI adoption in higher education using the DEMATEL approach. Through DEMATEL analysis, this research will uncover the interdependencies and directional relationships among these factors, providing a deeper understanding of how they influence each other and contribute to the overall dynamics of AI adoption in the higher education setting. The methodology involves statistical analysis with descriptive analysis and binary linear regression, as well as DEMATEL. Findings reveal that accessibility and customization drive AI adoption, while traditional learning preferences pose a barrier, and privacy and security issues are significant concerns. To ensure the successful and responsible integration of AI in higher education, the following recommendations are proposed which are it is crucial for emphasize investing in infrastructure and comprehensive training for faculty, prioritizing ethical considerations with clear guidelines and policies, and viewing AI as a collaborative tool that enhances educators' capabilities.
format Student Project
author Abd Rahman, Azizah
Razali, Iffah Najihah
Mohd Nazri, Irfan Suri
author_facet Abd Rahman, Azizah
Razali, Iffah Najihah
Mohd Nazri, Irfan Suri
author_sort Abd Rahman, Azizah
title Dynamics of ai adoption among students in higher education: drivers, barriers, and negative impacts - a statistical and DEMATEL analysis / Azizah Abd Rahman, Iffah Najihah Razali and Irfan Suri Mohd Nazri
title_short Dynamics of ai adoption among students in higher education: drivers, barriers, and negative impacts - a statistical and DEMATEL analysis / Azizah Abd Rahman, Iffah Najihah Razali and Irfan Suri Mohd Nazri
title_full Dynamics of ai adoption among students in higher education: drivers, barriers, and negative impacts - a statistical and DEMATEL analysis / Azizah Abd Rahman, Iffah Najihah Razali and Irfan Suri Mohd Nazri
title_fullStr Dynamics of ai adoption among students in higher education: drivers, barriers, and negative impacts - a statistical and DEMATEL analysis / Azizah Abd Rahman, Iffah Najihah Razali and Irfan Suri Mohd Nazri
title_full_unstemmed Dynamics of ai adoption among students in higher education: drivers, barriers, and negative impacts - a statistical and DEMATEL analysis / Azizah Abd Rahman, Iffah Najihah Razali and Irfan Suri Mohd Nazri
title_sort dynamics of ai adoption among students in higher education: drivers, barriers, and negative impacts - a statistical and dematel analysis / azizah abd rahman, iffah najihah razali and irfan suri mohd nazri
publishDate 2023
url https://ir.uitm.edu.my/id/eprint/93631/1/93631.pdf
https://ir.uitm.edu.my/id/eprint/93631/
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score 13.160551