Adaptive E-learning: Adaptation of Content According to the Continuous Evolution of the Learner During his Training

Mohammed Zaoudi, H. Belhadaoui
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引用次数: 7

Abstract

Higher education has always been based on a traditional education system. All learners have to attend all training courses without taking into consideration human and logistical constraints. This situation leads to major problems of massification, which unfortunately subsequently lead to problems of demotivation or even abandonment of a large number of students. A solution to these problems resides in introduction of distance learning. The implementation of online courses, such as MOOC (Massive Open Online Courses), and the emergence of educational platforms such as LMS (Learning Management System) or LCMS (Learning Content Management System), have made it possible to introduce the notion of e-learning into Higher education. Nevertheless, if e-learning has left the Stone Age elsewhere, it is still an emerging field in some countries as Morocco where it is far from having reached maturity. Like any new system or proposal, e-learning has its own detractors who need to be more reassured on certain aspects. In this article, we deal with some major issues related to e-learning platforms, which offer pre-established pedagogical content without really taking into account the particularity or evolution of each learner during the training path. We will therefore talk about a customised or adaptive e-learning. By combining UBA (User Behavior Analytics) and AI (Artificial Intelligence), we will propose during this article an LBA (Learner Behavior Analytics) model based on an a system called SBAN (Score and Behavior ANalytics).
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适应性网络学习:根据学习者在训练过程中的不断演变对内容进行适应
高等教育一直以传统的教育体系为基础。所有学习者都必须参加所有培训课程,而不考虑人力和后勤方面的限制。这种情况导致了大规模的问题,不幸的是,这随后导致了大量学生失去动力甚至放弃的问题。解决这些问题的办法在于引入远程学习。MOOC(大规模在线开放课程)等在线课程的实施,以及LMS(学习管理系统)或LCMS(学习内容管理系统)等教育平台的出现,使得将电子学习的概念引入高等教育成为可能。然而,如果电子学习在其他地方已经离开了石器时代,那么在摩洛哥等一些国家,它仍然是一个新兴领域,远未达到成熟。像任何新系统或提议一样,电子学习也有自己的批评者,他们需要在某些方面得到更多的保证。在本文中,我们讨论了与电子学习平台相关的一些主要问题,这些平台提供预先建立的教学内容,而没有真正考虑到每个学习者在培训路径中的特殊性或演变。因此,我们将讨论定制或自适应的电子学习。通过结合UBA(用户行为分析)和AI(人工智能),我们将在本文中提出一个基于SBAN(分数和行为分析)系统的LBA(学习者行为分析)模型。
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