Smaili El Miloud, Sraidi Soukaina, Salma Azzouzi, M. E. H. Charaf
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引用次数: 6
摘要
如今,MOOC (Massive Open Online Course,大规模在线开放课程)革命由于大量的在线开放课程而越来越受欢迎。然而,学习者的保留率一般在10%左右,这让人们对这种教育模式的有效性提出了质疑。本文的主要目的是设计一种新的模型,通过对每个学习者的自适应电子学习系统来提高课程完成率和对抗辍学,使所提出的课程符合学习者完成学习过程的适当方式。该模型将通过利用用户与学习环境交互过程中留下的痕迹来实现。通过使用这些痕迹,我们获得了与学习者概况相关的所有相关信息。此外,我们将通过蚁群算法生成针对每个学习者的推荐。
An Adaptive Learning Approach for Better Retention of Learners in MOOCs
Nowadays, the MOOC (Massive Open Online Course) revolution is gaining growing popularity due to the large number of open online courses. However, the retention rate of learners, which is generally around 10%, raises the question of the effectiveness of this mode of education. Our main objective in this paper is to design a new model to improve the courses completion rate and fight against the dropping out through an adaptive e-learning system for each learner, so that the proposed course correspond to the adequate way the learners could accomplish their learning process. The model will be realized by exploiting the traces left during the users' interactions with their learning environment. By using these traces, we get all pertinent information related to the learner profile. Furthermore, we will generate via ant colony algorithms, recommendations tailored to each learner.