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A semantic network model for measuring engagement and performance in online learning platforms

机译:用于衡量在线学习平台中的参与度和绩效的语义网络模型

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摘要

Due to the increasing global availability of the internet, online learning platforms such as Massive Open Online Courses (MOOCs), have become a new paradigm for distance learning in engineering education. While interactions between instructors and students are readily observable in a physical classroom environment, monitoring student engagement is challenging in MOOCs. Monitoring student engagement and measuring its impact on student performance are important for MOOC instructors, who are focused on improving the quality of their courses. The authors of this work present a semantic network model for measuring the different word associations between instructors and students in order to measure student engagement in MOOCs. Correlation analysis is then performed for identifying how student engagement in MOOCs affect student performance. Real-world MOOC transcripts and MOOC discussion forum data are used to evaluate the effectiveness of this research.
机译:由于互联网在全球范围内日益普及,在线学习平台(例如,大规模开放在线课程(MOOC))已成为工程教育中远程学习的新范例。虽然在物理教室环境中可以轻松观察到教师与学生之间的互动,但在MOOC中监控学生的参与仍是一项挑战。对于专注于提高课程质量的MOOC讲师,监视学生的参与度并衡量其对学生表现的影响非常重要。这项工作的作者提出了一种语义网络模型,用于测量教师与学生之间不同的单词联想,以衡量学生对MOOC的参与程度。然后进行相关分析,以识别学生对MOOC的参与如何影响学生的表现。真实的MOOC成绩单和MOOC讨论论坛数据用于评估这项研究的有效性。

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