An interval type-2 fuzzy logic based system for improved instruction within intelligent e-learning platforms

Khalid Almohammadi, Bo Yao, Abdulkareem Alzahrani, H. Hagras, Daniyal M. Al-Ghazzawi
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引用次数: 6

Abstract

E-learning is becoming increasingly more popular. However, for such platforms (where the students and tutors are geographically separated), it is necessary to estimate the degree of students' engagement with the course contents. Such feedback is highly important and useful for assessing the teaching quality and adjusting the teaching delivery in large-scale online learning platforms. When the number of attendees is large, it is essential to obtain overall engagement feedback, but it is also challenging to do so because of the high levels of uncertainty associated with the environments and students. To handle such uncertainties, we present a type-2 fuzzy logic based system using visual RGB-D features including head pose direction and facial expressions captured from a low-cost but robust 3D camera (Kinect v2) to estimate the engagement degree of the students for both remote and on-site education. This system enriches another self- learning type-2 fuzzy logic system which provides the instructors with suggestions to vary their teaching means to suit the level of course students and improve the course instruction and delivery. This proposed dynamic e-learning environment involves on-site students, distance students, and a teacher who delivers the lecture to all attending onsite and remote students. The rules are learned from the students' behavior and the system is continuously updated to give the teacher the ability to adapt the lecture delivery instructional approach to varied learners' engagement levels. The efficiency of the proposed system has been evaluated through various real-world experiments in the University of Essex iClassroom on a sample of thirty students and six teachers. These experiments demonstrate the efficiency of the proposed interval type-2 fuzzy logic based system to handle the faced uncertainties and produce superior improved average learners' engagements when compared to type-1 fuzzy systems and nonadaptive systems.
基于区间2型模糊逻辑的智能电子学习平台改进教学系统
电子学习正变得越来越流行。然而,对于这样的平台(学生和导师在地理上是分开的),有必要估计学生对课程内容的参与程度。这种反馈对于评估大型在线学习平台的教学质量和调整教学交付具有重要意义和实用价值。当参会者人数众多时,获得总体参与反馈是必要的,但由于环境和学生的高度不确定性,这样做也具有挑战性。为了处理这些不确定性,我们提出了一种基于2型模糊逻辑的系统,该系统使用视觉RGB-D特征,包括头部姿势方向和面部表情,这些特征来自低成本但功能强大的3D相机(Kinect v2),以估计学生对远程和现场教育的参与程度。该系统丰富了另一个自主学习的二类模糊逻辑系统,为教师提供了根据课程学生的水平变化教学手段的建议,并改善了课程的教学和传递。这个提议的动态电子学习环境包括现场学生、远程学生和一名向所有现场和远程学生授课的老师。这些规则是从学生的行为中学习的,系统不断更新,使教师能够根据不同的学习者参与水平调整授课教学方法。在埃塞克斯大学(University of Essex)的课堂上,对30名学生和6名教师进行了各种真实世界的实验,对所提出的系统的效率进行了评估。这些实验表明,与1型模糊系统和非自适应系统相比,所提出的基于区间2型模糊逻辑的系统在处理面对的不确定性方面具有效率,并且产生了更高的平均学习者参与度。
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