mooc学习行为建模与预测

J. Qiu, Jie Tang, T. Liu, Jie Gong, Chenhui Zhang, Qian Zhang, Yufei Xue
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引用次数: 156

摘要

大规模在线开放课程(MOOCs)收集了在线学习环境中所有学生互动的完整记录,为我们提供了前所未有的机会,可以以前所未有的精细粒度分析学生的学习行为。利用中国最大的mooc之一xuetangX的数据集,我们分析了影响学生参与mooc和学习的关键因素,我们可以在多大程度上推断学生的学习效果。我们观察到学生在选课和学习模式上存在显著的行为异质性。例如,学生付出更大的努力,问更多的问题,不一定更有可能获得证书。此外,当一个学生有一个或多个“证书朋友”时,她获得课程证书的可能性会显著增加(高出3倍)。此外,我们开发了一个统一的模型来预测学生的学习效率,通过结合用户人口统计,论坛活动和学习行为。我们证明,所提出的模型在预测学生在作业和课程证书上的表现方面明显优于几种替代方法(+2.03-9.03%的f1分数)。该模型是灵活的,可以应用于各种设置。例如,我们在xuetangX中部署了一个新功能,帮助教师动态优化教学过程。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Modeling and Predicting Learning Behavior in MOOCs
Massive Open Online Courses (MOOCs), which collect complete records of all student interactions in an online learning environment, offer us an unprecedented opportunity to analyze students' learning behavior at a very fine granularity than ever before. Using dataset from xuetangX, one of the largest MOOCs from China, we analyze key factors that influence students' engagement in MOOCs and study to what extent we could infer a student's learning effectiveness. We observe significant behavioral heterogeneity in students' course selection as well as their learning patterns. For example, students who exert higher effort and ask more questions are not necessarily more likely to get certificates. Additionally, the probability that a student obtains the course certificate increases dramatically (3 x higher) when she has one or more "certificate friends". Moreover, we develop a unified model to predict students' learning effectiveness, by incorporating user demographics, forum activities, and learning behavior. We demonstrate that the proposed model significantly outperforms (+2.03-9.03% by F1-score) several alternative methods in predicting students' performance on assignments and course certificates. The model is flexible and can be applied to various settings. For example, we are deploying a new feature into xuetangX to help teachers dynamically optimize the teaching process.
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