Novel Impact Model for Mobile Learning Adoption in Higher Education

Dolawattha, D. D. M. and Premadasa, H. K. Salinda (2023) Novel Impact Model for Mobile Learning Adoption in Higher Education. Asian Journal of Research in Computer Science, 16 (3). pp. 167-180. ISSN 2581-8260

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Abstract

In successful mobile learning (ML) integration, factors associated with live-ware, software, and infrastructure are important. The main objective of this study is to investigate and model the influencing factors for learners and teachers at once to adopt ML in higher education. The proposed model consists of five impact factors: teacher, learner, mobile devices, ML tools, ML contents, communication technologies, and higher education institutes. Then the proposed model was implemented using a modified Moodle mobile application and evaluated using 60 teachers and 60 learners attached to the University of Kelaniya, Sri Lanka in 2021. According to the experimental research design approach, the proposed impact model was assessed as pre-test and post-test surveys using seven questionnaires. According to the Pearson correlation coefficient test, the most significant factor for learners and teachers to adopt ML is the mobile device. Learning content and communication technology were elected as the second most significant adoption factors for teachers and learners consecutively. However, higher correlation values were obtained for all factors denoting that they are greatly influenced the participant to adopt ML. The significant influencing factor of each impact factor was also investigated. In conclusion, it was recommended that featured smart devices, quality learning content, user-satisfied communication technology, academic enriched ML tools and higher education institutes with sound educational facilities are crucial for the university community to adopt ML in higher education. These findings help design academic community acceptable ML environments for higher education context.

Item Type: Article
Subjects: Impact Archive > Computer Science
Depositing User: Managing Editor
Date Deposited: 21 Sep 2023 13:01
Last Modified: 21 Sep 2023 13:01
URI: http://research.sdpublishers.net/id/eprint/2816

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