E-Learning Satisfaction Analysis of the Support Factors

Siswanto, Boby and Alamsyah, Doni Purnama and Morika, Doni and Othman, Norfaridatul Akmaliah and Wijaya, Billiam Christofer and Adinda, Putri Giyan (2023) E-Learning Satisfaction Analysis of the Support Factors. In: 10th International Conference on Information Technology, Computer, and Electrical Engineering, ICITACEE 2023, 31 August 2023 through 1 September 2023, Virtual, Online.

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Abstract

E-learning satisfaction is an important factor in assessing the effectiveness and efficiency of distance learning. The use of Big Data technology can have a significant impact on e-learning satisfaction. The purpose of this research is to examine the implementation of big data in e-learning and the factors that can increase student e-learning satisfaction. This study uses a quantitative survey method with a questionnaire as a data collection tool. The research respondents were randomly selected e-learning students from several educational institutions that use Big Data technology in their e-learning platforms. There are 663 data collected through online questionnaires, then the data is processed through SmartPLS to test the research hypothesis. The results of the study show that the use of Big Data technology in an e-learning environment has a positive impact on student satisfaction. Several factors determine e-learning satisfaction including usability requirements, quality level, learning competence, and material relatedness. Relatedness to e-learning is more important in increasing student motivation in learning, as can be seen from the correlation value which is more dominant in forming student satisfaction. The e-learning platform must have navigation that is easy for users to understand and use. Learning content must be well-designed and follow established learning standards. The use of Big Data technology in e-learning can have a significant impact on student satisfaction and the quality of learning. Future research can develop a more personal and adaptive e- learning platform, using Big Data technology as the basis for its development.

Item Type: Conference or Workshop Item (Paper)
Uncontrolled Keywords: Adaptivity, Big Data, E-Learning Satisfaction, Relatedness
Divisions: Faculty of Technology Management and Technopreneurship
Depositing User: Anis Suraya Nordin
Date Deposited: 17 Oct 2024 12:26
Last Modified: 17 Oct 2024 12:26
URI: http://eprints.utem.edu.my/id/eprint/28050
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