A Universal Design for an Adaptive Context-Aware Mobile Cloud Learning Framework Using Machine Learning

Aiman M. Ayyal Awwad
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Abstract

Mobile learning is becoming more and more popular today. It gained popularity recently due to the COVID-19 pandemic restrictions in 2020. However, to provide learners with appropriate educational materials in such a mobile environment, the characteristics and context of the learners must be considered. Therefore, in this paper, we propose a framework for providing an adaptive context-aware learning process considering a combination of student learning models and principles of Universal Design for Learning (UDL). The proposed system consists of components capable of detecting changes in context and adapting the way the application responds and behaves. The framework uses a machine-learning algorithm to predict learners’ characteristics and follow UDL principles to deliver enriched user experience and location-aware content and activities. An online survey was conducted with 20 undergraduate students. We analyzed their levels of satisfaction with the proposed m-learning system. From the analyzed data, we noticed that the average rating values are close to 4.5, which indicates that the proposed m-learning system complies with UDL principles and provides an adaptive and localized learning environment, thus enhancing the efficiency of the learning process and experiences. The study also investigated the impact of factors (i.e., noise level, physical activity, and location) on learners’ concentration towards the learning process. The results show that these factors have a significant impact on the learner’s concentration level.
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使用机器学习的自适应上下文感知移动云学习框架的通用设计
如今,移动学习正变得越来越流行。由于2020年新冠肺炎疫情的限制,它最近受到了欢迎。然而,要在这种移动环境中为学习者提供合适的教育材料,必须考虑学习者的特点和背景。因此,在本文中,我们提出了一个框架,考虑到学生学习模型和通用学习设计(UDL)原则的结合,提供一个自适应的上下文感知学习过程。所建议的系统由能够检测上下文变化并适应应用程序响应和行为方式的组件组成。该框架使用机器学习算法来预测学习者的特征,并遵循UDL原则来提供丰富的用户体验和位置感知内容和活动。该研究对20名本科生进行了在线调查。我们分析了他们对提议的移动学习系统的满意度。从分析的数据中,我们注意到平均评分值接近4.5,这表明所提出的移动学习系统符合UDL原则,并提供了自适应和本地化的学习环境,从而提高了学习过程和经验的效率。本研究还调查了各种因素(即噪音水平、体力活动和地点)对学习者在学习过程中注意力的影响。结果表明,这些因素对学习者的注意力水平有显著影响。
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