MOOC Evaluation System Based on Deep Learning

Author:

Tzeng Jian-Wei,Lee Chia-An,Huang Nen-Fu,Huang Hao-Hsuan,Lai Chin-Feng

Abstract

Massive open online courses (MOOCs) are open access, Web-based courses that enroll thousands of students. MOOCs deliver content through recorded video lectures, online readings, assessments, and both student–student and student–instructor interactions. Course designers have attempted to evaluate the experiences of MOOC participants, though due to large class sizes, have had difficulty tracking and analyzing the online actions and interactions of students. Within the broader context of the discourse surrounding big data, educational providers are increasingly collecting, analyzing, and utilizing student information. Additionally, big data and artificial intelligence (AI) technology have been applied to better understand students’ learning processes. Questionnaire response rates are also too low for MOOCs to be credibly evaluated. This study explored the use of deep learning techniques to assess MOOC student experiences. We analyzed students’ learning behavior and constructed a deep learning model that predicted student course satisfaction scores. The results indicated that this approach yielded reliable predictions. In conclusion, our system can accurately predict student satisfaction even when questionnaire response rates are low. Accordingly, teachers could use this system to better understand student satisfaction both during and after the course.

Publisher

Athabasca University Press

Subject

Education

Cited by 18 articles. 订阅此论文施引文献 订阅此论文施引文献,注册后可以免费订阅5篇论文的施引文献,订阅后可以查看论文全部施引文献

1. An Extensive Examination of Varied Approaches in E-Learning and MOOC Research: A Thorough Overview;2024 6th International Conference on Pattern Analysis and Intelligent Systems (PAIS);2024-04-24

2. MOOC Development For Artificial Intelligence and Decision-Making Specialists Education;2024 7th International Conference on Information Technologies in Engineering Education (Inforino);2024-04-16

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5. Enhancing Human–Computer Interaction in Online Education: A Machine Learning Approach to Predicting Student Emotion and Satisfaction;International Journal of Human–Computer Interaction;2023-12-19

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