Comparative Analysis of the Feature Extraction Approaches for Predicting Learners Progress in Online Courses: MicroMasters Credential versus Traditional MOOCs

F. Soleimani, Jeonghyun Lee
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引用次数: 5

Abstract

Although MicroMasters courses differ from traditional undergraduate level MOOCs in student demographics, course design, and outcomes, the various aspects of this type of program have not yet been sufficiently investigated. This study aims to pave the path towards enhancing the design of constituent courses of MicroMasters programs with the focus on the application of Machine Learning algorithms. Thereby, we use a large-scale clickstream edX database to explore the trends in the online engagement of learners in a MicroMasters program, detect clickstream events that are highly correlated with the students' progress, and investigate how the engagements differ from those in a classic individual MOOC. Contrary to the previous application of machine learning algorithms in learning analytics, we implement various well-known machine learning approaches such as stepwise regression and tree-based algorithms, evaluate their performance, and propose the best-performed approach. We elaborate on noticeable differences between the engagements of the considered two groups.
预测在线课程学习者学习进度的特征提取方法的比较分析:MicroMasters Credential与传统mooc
尽管微硕士课程在学生人口统计、课程设计和结果方面与传统的本科级mooc有所不同,但这类课程的各个方面还没有得到充分的研究。本研究旨在以机器学习算法的应用为重点,为提高微硕士项目组成课程的设计奠定基础。因此,我们使用一个大规模的点击流edX数据库来探索学习者在MicroMasters课程中在线参与的趋势,检测与学生进步高度相关的点击流事件,并调查这种参与与传统的个人MOOC有何不同。与之前机器学习算法在学习分析中的应用相反,我们实现了各种众所周知的机器学习方法,如逐步回归和基于树的算法,评估了它们的性能,并提出了性能最好的方法。我们详细阐述了所考虑的两个群体之间的显著差异。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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