Evaluation of factors affecting university students' satisfaction with e-learning systems used dur-ing Covid-19 crisis: A field study in Jordanian higher education institutions

Q1 Social Sciences
R. Masa’deh, D. Almajali, Ala'aldin Alrowwad, Rami Suleiman Alkhawaldeh, Sufian M Khwaldeh, B. Obeidat
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引用次数: 5

Abstract

E-learning results from the integration of technology and education and has become an effective learning medium today. E-learning courses and systems with various services are on the rise owing to its importance. E-learning systems should be evaluated to assure successful delivery, effective usage, and positive impacts on learners. A holistic model that identifies various levels of success on a vast range of success determinants was proposed. The model was empirically validated using data obtained from 724 e-learning student users in Jordan. Structural Equation Modelling (SEM) was used in data analyses. Results showed that perceived usefulness of information systems, user training, system quality, and management support have positive effects on user’s behavioral intention; whereas perceived ease of use has not. Also, SEM displayed that user behavioral intention has a positive effect on information systems use, use on student satisfaction, and the latter on student loyalty. Machine Learning (ML) methods produce high correlation values reaching up to 80% in predicting Behavior Intention (BI) from the input factors, and student loyalty from student satisfaction factors. This indicates that the ML are promising techniques to forecast the future targets based on the input independent features.
评估影响大学生对2019冠状病毒病危机期间使用的电子学习系统满意度的因素:在约旦高等教育机构的实地研究
电子学习是技术与教育相结合的产物,是当今一种有效的学习媒介。由于其重要性,提供各种服务的电子学习课程和系统正在兴起。应该对电子学习系统进行评估,以确保成功交付、有效使用和对学习者的积极影响。提出了一个整体模型,在广泛的成功决定因素上确定不同程度的成功。使用从约旦724名电子学习学生用户中获得的数据对该模型进行了实证验证。数据分析采用结构方程模型(SEM)。结果表明,信息系统感知有用性、用户培训、系统质量和管理支持对用户行为意愿有正向影响;然而易用性却没有。此外,SEM还显示,用户行为意向对信息系统的使用、使用对学生满意度的影响、学生满意度对学生忠诚度的影响均为正。机器学习(ML)方法在从输入因素预测行为意向(BI)和从学生满意度因素预测学生忠诚度方面产生高达80%的高相关性值。这表明机器学习是基于输入无关特征预测未来目标的有前途的技术。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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来源期刊
CiteScore
5.80
自引率
0.00%
发文量
163
审稿时长
8 weeks
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