A theoretical model for big data adoption in the higher education institution of Pakistan / Maria Ijaz Baig

Big data adoption has already gained tremendous attention from executives in various fields. However, it is still not well explored in the education sector, where a large amount of academic data is being produced. The higher education institutions of Pakistan are facing difficulties in upgrading the...

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Main Author: Maria Ijaz , Baig
Format: Thesis
Published: 2022
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Online Access:http://studentsrepo.um.edu.my/15519/1/Maria_Ijaz.pdf
http://studentsrepo.um.edu.my/15519/2/Maria_Ijaz_Baig.pdf
http://studentsrepo.um.edu.my/15519/
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spelling my.um.stud.155192025-02-09T19:12:14Z A theoretical model for big data adoption in the higher education institution of Pakistan / Maria Ijaz Baig Maria Ijaz , Baig QA75 Electronic computers. Computer science Big data adoption has already gained tremendous attention from executives in various fields. However, it is still not well explored in the education sector, where a large amount of academic data is being produced. The higher education institutions of Pakistan are facing difficulties in upgrading the educational managerial competency that is needed to fulfil future demands. Thus, there is a need of big data adoption in higher education institutions of Pakistan to improve the managerial aptitude. However, there is a limited literature on theoretical model and factors that affect big data adoption in the higher education institutions. This study aims to develop a theoretical model and identify the factors that influence big data adoption in a higher education institution. Ten factors were identified from the literature, and a theoretical model was developed. Technology-Organization-Environment and Diffusion of Innovation theories were adopted as a theoretical base in this study. Meanwhile, the moderating effects of the university size and university age on big data adoption were added to the developed model. A virtual university in Pakistan is recognized by the Higher Education Commission of Pakistan as a higher education institution is chosen. Data was collected from a sample of 195 respondents from the managerial side of a virtual university in Pakistan using an online survey. Structural Equation Modelling was used to predict the relationships between identified factors and big data adoption. According to the results, relative advantage, complexity, compatibility, top management support, financial resources, human expertise and skills, competitive pressure, security and privacy, and government policies were significant determinants of big data adoption. However, results revealed an insignificant relationship between the information technology infrastructure and big data adoption. The findings further revealed the significant moderating effects of university age on government policies, security and privacy concerns with big data adoption. Similarly, substantial moderating effects of the university size between information technology infrastructure and big data adoption were found. The findings from this study can assist the ministry of education, higher education institutions administrators, and big data service providers in the adoption of big data for the education sector. Future studies could be longitudinal, conducted at the post-adoption stage and at other educational levels. 2022-07 Thesis NonPeerReviewed application/pdf http://studentsrepo.um.edu.my/15519/1/Maria_Ijaz.pdf application/pdf http://studentsrepo.um.edu.my/15519/2/Maria_Ijaz_Baig.pdf Maria Ijaz , Baig (2022) A theoretical model for big data adoption in the higher education institution of Pakistan / Maria Ijaz Baig. PhD thesis, Universiti Malaya. http://studentsrepo.um.edu.my/15519/
institution Universiti Malaya
building UM Library
collection Institutional Repository
continent Asia
country Malaysia
content_provider Universiti Malaya
content_source UM Student Repository
url_provider http://studentsrepo.um.edu.my/
topic QA75 Electronic computers. Computer science
spellingShingle QA75 Electronic computers. Computer science
Maria Ijaz , Baig
A theoretical model for big data adoption in the higher education institution of Pakistan / Maria Ijaz Baig
description Big data adoption has already gained tremendous attention from executives in various fields. However, it is still not well explored in the education sector, where a large amount of academic data is being produced. The higher education institutions of Pakistan are facing difficulties in upgrading the educational managerial competency that is needed to fulfil future demands. Thus, there is a need of big data adoption in higher education institutions of Pakistan to improve the managerial aptitude. However, there is a limited literature on theoretical model and factors that affect big data adoption in the higher education institutions. This study aims to develop a theoretical model and identify the factors that influence big data adoption in a higher education institution. Ten factors were identified from the literature, and a theoretical model was developed. Technology-Organization-Environment and Diffusion of Innovation theories were adopted as a theoretical base in this study. Meanwhile, the moderating effects of the university size and university age on big data adoption were added to the developed model. A virtual university in Pakistan is recognized by the Higher Education Commission of Pakistan as a higher education institution is chosen. Data was collected from a sample of 195 respondents from the managerial side of a virtual university in Pakistan using an online survey. Structural Equation Modelling was used to predict the relationships between identified factors and big data adoption. According to the results, relative advantage, complexity, compatibility, top management support, financial resources, human expertise and skills, competitive pressure, security and privacy, and government policies were significant determinants of big data adoption. However, results revealed an insignificant relationship between the information technology infrastructure and big data adoption. The findings further revealed the significant moderating effects of university age on government policies, security and privacy concerns with big data adoption. Similarly, substantial moderating effects of the university size between information technology infrastructure and big data adoption were found. The findings from this study can assist the ministry of education, higher education institutions administrators, and big data service providers in the adoption of big data for the education sector. Future studies could be longitudinal, conducted at the post-adoption stage and at other educational levels.
format Thesis
author Maria Ijaz , Baig
author_facet Maria Ijaz , Baig
author_sort Maria Ijaz , Baig
title A theoretical model for big data adoption in the higher education institution of Pakistan / Maria Ijaz Baig
title_short A theoretical model for big data adoption in the higher education institution of Pakistan / Maria Ijaz Baig
title_full A theoretical model for big data adoption in the higher education institution of Pakistan / Maria Ijaz Baig
title_fullStr A theoretical model for big data adoption in the higher education institution of Pakistan / Maria Ijaz Baig
title_full_unstemmed A theoretical model for big data adoption in the higher education institution of Pakistan / Maria Ijaz Baig
title_sort theoretical model for big data adoption in the higher education institution of pakistan / maria ijaz baig
publishDate 2022
url http://studentsrepo.um.edu.my/15519/1/Maria_Ijaz.pdf
http://studentsrepo.um.edu.my/15519/2/Maria_Ijaz_Baig.pdf
http://studentsrepo.um.edu.my/15519/
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score 13.244413