Bellarhmouch Youssra, Jeghal Adil, Tairi Hamid, Benjelloun Nadia
LISAC Laboratory, Faculty of Sciences Dhar EL Mehraz, Sidi Mohamed Ben Abdellah University, Fez, Morocco.
LISAC Laboratory, National School of Applied Sciences, Sidi Mohamed Ben Abdellah University, Fez, Morocco.
Educ Inf Technol (Dordr). 2023;28(4):4243-4263. doi: 10.1007/s10639-022-11392-y. Epub 2022 Oct 14.
Nowadays, the need for e-learning is amplified, especially after the Covid-19 pandemic. E-learning platforms present a solution for the continuity of the learning process. Learners are using different platforms and tools for learning. For this, it is necessary to model the learner for the personalization of the learning environment according to his needs, and characteristics, which will allow having a more effective and efficient environment. The existing literature maintains that the learner model represents the basis and the key to adaptation. To achieve this goal, we propose a new adaptation aspect of the learner model by integrating relevant information such as learning style, domain-related data, assessment-related data, and affective data. It has advantages in terms of precision as it solves the problem of management uncertainty of some parameters. Our approach suggests that the combination of stereotype method, fuzzy logic, and similarity techniques is an appropriate approach for initializing and updating the learner model for learning personalization.
如今,尤其是在新冠疫情之后,对电子学习的需求大幅增加。电子学习平台为学习过程的连续性提供了一种解决方案。学习者正在使用不同的平台和工具进行学习。为此,有必要根据学习者的需求和特征对其进行建模,以实现学习环境的个性化,从而营造一个更高效的学习环境。现有文献认为,学习者模型是适应的基础和关键。为实现这一目标,我们通过整合学习风格、领域相关数据、评估相关数据和情感数据等相关信息,提出了学习者模型的一个新的适应方面。它在精度方面具有优势,因为它解决了一些参数管理不确定性的问题。我们的方法表明,刻板印象方法、模糊逻辑和相似性技术的结合是一种适用于初始化和更新学习者模型以实现学习个性化的方法。