Abstract

In recent years, massive open online courses (MOOCs) have received widespread attention owing to their flexibility and free access, which has attracted millions of online learners to participate in courses. With the wide application of MOOCs in educational institutions, a large amount of learners’ log data exist in the MOOCs platform, and this lays a solid data foundation for exploring learners’ online learning behaviors. Using data mining techniques to process these log data and then analyze the relationship between learner behavior and academic performance has become a hot topic of research. Firstly, this paper summarizes the commonly used predictive models in the relevant research fields. Based on the behavior log data of learners participating in 12 courses in MOOCs, an entropy-based indicator quantifying behavior change trends is proposed, which explores the relationships between behavior change trends and learners’ academic performance. Next, we build a set of behavioral features, which further analyze the relationships between behaviors and academic performance. The results demonstrate that entropy has a certain correlation with the corresponding behavior, which can effectively represent the change trends of behavior. Finally, to verify the effectiveness and importance of the predictive features, we choose four benchmark models to predict learners’ academic performance and compare them with the previous relevant research results. The results show that the proposed feature selection-based model can effectively identify the key features and obtain good prediction performance. Furthermore, our prediction results are better than the related studies in the performance prediction based on the same Xuetang MOOC platform, which demonstrates that the combination of the selected learner-related features (behavioral features + behavior entropy) can lead to a much better prediction performance.

Highlights

  • In recent years, massive open online courses (MOOCs) have received widespread attention thanks to their flexibility and free access [1], which has attracted millions of online learners to participate in courses

  • It shows the relationships between learners’ behaviors and academic performance in different courses through the correlation analysis between behavioral features and academic performance, and explores which behaviors are closely related to academic performance

  • We find that the correlation coefficient between progress of quizzes submitted (QP) and academic performance is 0.90, while the grades of MOOC learners were obtained by the sum of the grades of test assignments according to a certain proportion of weight

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Summary

Introduction

Massive open online courses (MOOCs) have received widespread attention thanks to their flexibility and free access [1], which has attracted millions of online learners to participate in courses. One of the main challenges faced by MOOCs is the low learner completion rate. Finding ways to improve the completion rates of MOOC learners has become a major challenge. Scholars have conducted in-depth studies on learners’ behaviors in the MOOCs environment and analyzed their learning state in the process of online learning, in order to gain a better understanding of learners’ course engagement, learning style, and behavior patterns. Learner performance prediction has received much attention in recent years because the predictive learning outcomes of online learners can offer useful information for instructors to take timely interventions to get them through the course to completion [6]

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