首页> 外文期刊>Learning Technologies, IEEE Transactions on >Learning about Social Learning in MOOCs: From Statistical Analysis to Generative Model
【24h】

Learning about Social Learning in MOOCs: From Statistical Analysis to Generative Model

机译:在MOOC中学习社会学习:从统计分析到生成模型

获取原文
获取原文并翻译 | 示例
       

摘要

We study user behavior in the courses offered by a major massive online open course (MOOC) provider during the summer of 2013. Since social learning is a key element of scalable education on MOOC and is done via online discussion forums, our main focus is on understanding forum activities. Two salient features of these activities drive our research: (1) : for each course studied, the volume of discussion declined continuously throughout the duration of the course; (2) : at least 30 percent of the courses produced new threads at rates that are infeasible for students or teaching staff to read through. Further, a substantial portion of these discussions are not directly course-related. In our analysis, we investigate factors that are associated with the decline of activity on MOOC forums, and we find effective strategies to classify threads and rank their relevance. Specifically, we first use linear regression models to analyze the forum activity count data over time, and make a number of observations; for instance, the teaching staff’s active participation in the discussions is correlated with an increase in the discussion volume but does not slow down the decline rate. We then propose a unified generative model for the discussion threads, which allows us both to choose efficient thread classifiers and to design an effective algorithm for ranking thread relevance. Further, our algorithm is compared against two baselines using human evaluation from Amazon Mechanical Turk.
机译:我们在2013年夏季的大型大型在线开放课程(MOOC)提供商提供的课程中研究用户行为。由于社会学习是MOOC可扩展性教育的关键要素,并且通过在线讨论论坛完成,因此我们的主要重点是了解论坛活动。这些活动的两个显着特征推动了我们的研究:(1):对于所研究的每门课程,在整个课程期间,讨论量不断下降; (2):至少有30%的课程产生了新的线索,其速度对于学生或教职员工来说是不可行的。此外,这些讨论的很大一部分与课程没有直接关系。在我们的分析中,我们调查了与MOOC论坛上活动减少相关的因素,并找到了有效的策略来对主题进行分类并对其相关性进行排名。具体来说,我们首先使用线性回归模型来分析论坛活动随时间变化的数据,并进行大量观察。例如,教职工的积极参与与讨论量的增加相关,但并不会减慢下降率。然后,我们为讨论线程提出了一个统一的生成模型,使我们既可以选择有效的线程分类器,又可以设计一种有效的算法来对线程相关性进行排名。此外,我们使用Amazon Mechanical Turk的人工评估将我们的算法与两个基准进行了比较。

著录项

相似文献

  • 外文文献
  • 中文文献
  • 专利
获取原文

客服邮箱:kefu@zhangqiaokeyan.com

京公网安备:11010802029741号 ICP备案号:京ICP备15016152号-6 六维联合信息科技 (北京) 有限公司©版权所有
  • 客服微信

  • 服务号