Affiliation:
1. University of New England, Australia
Abstract
There is still a gap of knowledge on the usage of recommender systems in Saudi universities and the wider issue of technological change in the universities of developing countries. Relatively, this lack of knowledge is an issue to universities seeking to meet students/instructors' expectations and requirements by offering consistently high perceived service standards of e-learning services in a rapidly changing technological environment. To address this issue, this paper seeks to explore the impact of the acceptance and adoption of recommender systems in e-leaning for Saudi universities and this will help to investigate the students/instructors experience according to the e-learning service quality. Thus, a proposed e-framework has been presented. Such framework describes the factors of acceptance (such as service quality, student/instructor experience, and Human Computer Interaction guidelines) should be considered in the e-learning system because it is viewed as a determinant of student/instructor/university satisfaction.
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