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Probabilistic Graphical Models for Boosting Cardinal and Ordinal Peer Grading in MOOCs

机译:用于提高MOOC中基本和有序对等分级的概率图模型

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摘要

With the enormous scale of massive open online courses (MOOCs), peer grading is vital for addressing the assessment challenge for open-ended assignments or exams while at the same time providing students with an effective learning experience through involvement in the grading process. Most existing MOOC platforms use simple schemes for aggregating peer grades, e.g., taking the median or mean. To enhance these schemes, some recent research attempts have developed machine learning methods under either the cardinal setting (for absolute judgment) or the ordinal setting (for relative judgment). In this paper, we seek to study both cardinal and ordinal aspects of peer grading within a common framework. First, we propose novel extensions to some existing probabilistic graphical models for cardinal peer grading. Not only do these extensions give superior performance in cardinal evaluation, but they also outperform conventional ordinal models in ordinal evaluation. Next, we combine cardinal and ordinal models by augmenting ordinal models with cardinal predictions as prior. Such combination can achieve further performance boosts in both cardinal and ordinal evaluations, suggesting a new research direction to pursue for peer grading on MOOCs. Extensive experiments have been conducted using real peer grading data from a course called “Science, Technology, and Society in China I” offered by HKUST on the Coursera platform.

著录项

  • 作者

    Mi, FeiYeung, Dit Yan;

  • 作者单位
  • 年(卷),期 1900(),
  • 年度 1900
  • 页码
  • 总页数 8
  • 原文格式 PDF
  • 正文语种
  • 中图分类
  • 网站名称 香港科技大学图书馆
  • 栏目名称 所有文件
  • 关键词

  • 入库时间 2022-08-19 17:04:25
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