Chapter 13 Educational Data Mining for Peer Assessment in Communities of Learners

M. De Marsico, F. Sciarrone, A. Sterbini, M. Temperini
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引用次数: 2

Abstract

In the last years, the design and implementation of web-based education systems has grown exponentially, spurred by the fact that neither students nor teachers are bound to a specific location and that this form of computer-based education is virtually independent of any specific hardware platform. These systems accumulate a large amount of data: educational data mining and learning analytics are the two much related fields of research with the aim of using these educational data to improve the learning process. In this chapter, the authors investigate the peer assessment setting in communities of learners. Peer assessment is an effective didactic strategy, useful to evaluate groups of students in educational environments such as high schools and universities where students are required to answer open-ended questions to increase their problem-solving skills. Furthermore, such an approach could become necessary in the learning contexts where the number of students to evaluate could be very large as, for example, in massive open online courses. Here the author focus on the automated support to grading open answers via a peer evaluation-based approach, which is mediated by the (partial) grading work of the teacher, and produces a (partial as well) automated grading. The author propose to support such automated grading by means of two methods, coming from the data-mining field, such as Bayesian Networks and K-Nearest Neighbours (K-NN), presenting some experimental results, which support our choices.
第13章教育数据挖掘在学习者社区的同侪评估
在过去的几年里,基于网络的教育系统的设计和实现呈指数级增长,这是由于学生和教师都不受特定地点的限制,而且这种基于计算机的教育形式实际上独立于任何特定的硬件平台。这些系统积累了大量的数据:教育数据挖掘和学习分析是两个非常相关的研究领域,目的是利用这些教育数据来改进学习过程。在本章中,作者调查了学习者社区的同伴评估设置。同伴评估是一种有效的教学策略,对于在高中和大学等教育环境中评估学生群体很有用,因为学生需要回答开放式问题,以提高他们解决问题的能力。此外,在需要评估的学生数量可能非常大的学习环境中,例如在大规模开放的在线课程中,这种方法可能是必要的。在这里,作者将重点放在通过基于同行评估的方法对开放式答案评分的自动支持上,该方法由教师的(部分)评分工作调解,并产生(部分)自动评分。作者提出了两种来自数据挖掘领域的方法,如贝叶斯网络和k -近邻(K-NN)来支持这种自动评分,并给出了一些实验结果,支持我们的选择。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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