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Towards Personalization of Peer Review in Learning Programming

机译:学习编程中同行评审的个性化

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摘要

Peer review is one of the effective processes for sharing knowledge and improving overall learning performance. This became more popular by the use of ICT. However, it is challenging to implement peer review in learning programming languages due to the complexity of the subject matter. A group of peer reviewers may have different overall performance but similar weaknesses on a given aspect of the programming tasks. Hence, they may not be able to help each other to address individual needs. In this paper, we present a personalized approach to peer review with consideration to criteria based assessment and individual performance on specific programming tasks. This is achieved using a novel peer-matching algorithm to create reviewer groups. The algorithm assigns peer-reviewers in such a way that each student gets reviews from at least three peers with different levels of competence (low, medium and high). Peer matching is tailored to individual student needs with respect to specific aspects of learning programming. This work implemented a web based peer review system, and carried out user-based evaluations with computer science students. There are indications that personalized peer matching, based on relevant assessment criteria, can improve individual learning achievement in programming courses.
机译:同行评审是共享知识和提高整体学习成绩的有效过程之一。通过使用ICT,这一点变得更加流行。但是,由于主题的复杂性,在学习编程语言中实施同行评议是一项挑战。一组同行审阅者可能具有不同的总体表现,但是在编程任务的给定方面存在类似的弱点。因此,他们可能无法互相帮助解决个人需求。在本文中,我们提出了一种个性化的同行评审方法,其中考虑了基于标准的评估和针对特定编程任务的个人绩效。这是通过使用新颖的对等匹配算法创建审阅者组来实现的。该算法以这样的方式分配同级审阅者:每个学生至少从具有不同能力水平(低,中和高)的三个同级中获得评论。对等匹配是针对学生在学习编程方面的特定需求而量身定制的。这项工作实现了一个基于Web的同行评审系统,并与计算机科学专业的学生进行了基于用户的评估。有迹象表明,基于相关的评估标准,个性化的同级匹配可以提高编程课程中的个人学习成绩。

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