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首页> 外文期刊>Journal of Universal Computer Science >An Algorithm for Peer Review Matching in Massive Courses for Minimising Students' Frustration
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An Algorithm for Peer Review Matching in Massive Courses for Minimising Students' Frustration

机译:大规模课程中同行评议匹配的算法,可最大程度地减少学生的挫败感

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Traditional pedagogical approaches are no longer sufficient to cope with the increasing challenges of Massive Open On-line Courses (MOOCs). Consequently, it is necessary to explore new paradigms. This paper describes an exploration of the adaptation of the peer review methodology for its application to MOOCs. Its main goal is to minimise the students' frustration through the reduction of the number of committed students that receive no feedback from their peers. In order to achieve this objective, we propose two algorithms for the peer review matching in MOOCs. Both reward committed students by prioritising the review of their submissions. The first algorithm uses sliding deadlines to minimise the probability of a submission not being reviewed. Our experiments show that it reduces dramatically the number of submissions from committed students that do not receive any review. The second algorithm is a simplification of the former. It is easier to implement and, despite performing worse than the first one, it also improves with respect to the baseline.
机译:传统的教学方法已不足以应对大规模开放式在线课程(MOOC)日益严峻的挑战。因此,有必要探索新的范例。本文描述了将同行评审方法应用于MOOC的方法。它的主要目标是通过减少没有得到同龄人反馈的坚定的学生人数来最大程度地减少学生的挫败感。为了达到这个目的,我们提出了两种MOOC的同行评审匹配算法。两者都通过优先审查提交的论文来奖励承诺的学生。第一种算法使用滑动截止期限来最大程度地减少提交不被审阅的可能性。我们的实验表明,它极大地减少了未收到任何评论的忠实学生的提交数量。第二种算法是前一种算法的简化。它比第一个方法更容易实现,尽管性能比第一个方法差,但相对于基线,它也有所改进。

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