Transfer Learning using Representation Learning in Massive Open Online Courses

Mucong Ding, Yanbang Wang, Erik Hemberg, Una-May O’Reilly
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引用次数: 16

Abstract

In a Massive Open Online Course (MOOC), predictive models of student behavior can support multiple aspects of learning, including instructor feedback and timely intervention. Ongoing courses, when the student outcomes are yet unknown, must rely on models trained from the historical data of previously offered courses. It is possible to transfer models, but they often have poor prediction performance. One reason is features that inadequately represent predictive attributes common to both courses. We present an automated transductive transfer learning approach that addresses this issue. It relies on problem-agnostic, temporal organization of the MOOC clickstream data, where, for each student, for multiple courses, a set of specific MOOC event types is expressed for each time unit. It consists of two alternative transfer methods based on representation learning with auto-encoders: a passive approach using transductive principal component analysis and an active approach that uses a correlation alignment loss term. With these methods, we investigate the transferability of dropout prediction across similar and dissimilar MOOCs and compare with known methods. Results show improved model transferability and suggest that the methods are capable of automatically learning a feature representation that expresses common predictive characteristics of MOOCs.
大规模在线开放课程中运用表征学习的迁移学习
在大规模开放在线课程(MOOC)中,学生行为的预测模型可以支持学习的多个方面,包括教师反馈和及时干预。在学生成绩未知的情况下,正在进行的课程必须依赖从以前提供的课程的历史数据中训练出来的模型。迁移模型是可能的,但它们的预测性能往往很差。其中一个原因是,这些特征不足以代表这两种课程共有的预测属性。我们提出了一种自动转导迁移学习方法来解决这个问题。它依赖于与问题无关的MOOC点击流数据的时态组织,其中,对于每个学生,对于多个课程,针对每个时间单位表示一组特定的MOOC事件类型。它由两种基于自编码器表示学习的可选传输方法组成:一种使用转换主成分分析的被动方法和一种使用相关对齐损失项的主动方法。利用这些方法,我们研究了在相似和不同mooc之间辍学预测的可转移性,并与已知方法进行了比较。结果表明,模型可移植性得到了提高,并表明该方法能够自动学习表达mooc共同预测特征的特征表示。
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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