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Collaborative Calibrated Peer Assessment in Massive Open Online Courses

机译:大规模在线公开课程中的协作式校准对等评估

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摘要

The free nature and open access courses in the Massive Open Online Courses (MOOC) allow the facilities of disseminating information for a large number of participants. However, the "massive" propriety can generate many pedagogical problems, such as the assessment of learners, which is considered as the major difficulty facing in the MOOC. In fact, the immense number of learners who exceeded in some MOOC the hundreds of thousands make the instructors' evaluation of students' production quite impossible. In this work, the authors present a new approach for assessing the learners' production in MOOC. This approach combines the peer assessment with the collaborative learning and the calibrated method. It aims at increasing the degree of trust in peer-assessment. For evaluating the proposed approach, the authors implemented a MOOC dedicated for learning algorithms. In addition, an experiment was conducted during two months for knowing the effects of the proposed approach. The obtained results are presented in this paper. They are judged as very interesting and encouraging.
机译:大规模开放在线课程(MOOC)中的免费性质和开放获取课程,为向大量参与者传播信息提供了便利。但是,“大规模”的礼节会产生许多教学上的问题,例如对学习者的评估,这被认为是MOOC面临的主要困难。实际上,在一些MOOC中,成千上万的学习者超过了成千上万,这使得讲师们对学生的作品进行评估是完全不可能的。在这项工作中,作者提出了一种评估MOOC中学生的学习能力的新方法。该方法将对等评估与协作学习和校准方法相结合。它旨在提高对同伴评估的信任度。为了评估提出的方法,作者实施了专用于学习算法的MOOC。此外,在两个月的时间里进行了一项实验,以了解该方法的效果。所获得的结果将在本文中介绍。他们被认为非常有趣和鼓舞。

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