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Mobile learning key influencing factors adoption based on analytic hierarchy process

Mohamed Sarrab, Hafedh Al-Shihi and Ibtisam Nasser Said Al Shibli

International Journal of Information and Decision Sciences, 2017, vol. 9, issue 4, 387-404

Abstract: From innovation adoption perspective, this paper studies learner's perceptions and willingness toward M-learning adoption and investigates the key factors affecting M-learning adoption behaviour in Oman and the Arab Gulf Region. Despite a large amount of research in the field of M-learning, there is so much research focused on analysing the relationship between the perceived innovative characteristics and willingness of M-learning adoption. Using analytic hierarchy process (AHP), 28 factors of perceived innovative characteristics have been analysed to examine the relationship among the perceived innovative characteristics and willingness of M-learning adoption. The results of a total of 806 learners from different institutes in Omani higher education that participated in this research showed that some factors of perceived innovative characteristics, such as enjoyment, flexibility, suitability, social, economic, and efficiency have more influence on learners' adoption of M-learning. The effort is part of the Omani-funded research project investigating the development, adoption and dissemination of mobile learning in Oman.

Keywords: mobile learning; M-learning; flexibility; suitability; efficiency; social; economic; enjoyment; analytic hierarchy process; AHP; theory of innovation diffusion. (search for similar items in EconPapers)
Date: 2017
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Citations: View citations in EconPapers (1)

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