社会网络分析与挖掘,支持在线学生参与评估

Reihaneh Rabbany, M. Takaffoli, Osmar R Zaiane
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引用次数: 52

摘要

使用电子学习环境的课程越来越多,在线讨论在学生的协作学习中发挥着重要作用。即使在只有少数学生的课程中,这些论坛在几个月内也可能产生数千条消息。在这种情况下,人工评估学生的参与是一项重大挑战,因为当前的电子学习环境并没有提供太多关于学生之间互动结构的信息。最近有一个应用社会网络分析(SNA)技术来研究这些相互作用的研究路线。在这里,我们建议利用SNA技术,包括社区挖掘,以发现我们从学生通信中产生的社会网络中的相关结构,以及我们从交换消息的内容中产生的信息网络。有了这些发现的相关结构的可视化和中心和外围参与者的自动识别,教师就有了更好的方法来评估在线讨论的参与情况。我们在一个名为Meerkat-ED的工具箱中实现了这些新想法,它可以自动发现相关的网络结构,可视化论坛参与者之间互动的整体快照,并概述领导者/外围学生。此外,它创建了讨论主题的分层摘要,这使教师能够快速查看正在讨论的内容。我们相信利用这个工具箱的挖掘能力将促进对学生参与在线课程的公平评估。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Social network analysis and mining to support the assessment of on-line student participation
There is a growing number of courses delivered using elearning environments and their online discussions play an important role in collaborative learning of students. Even in courses with a few number of students, there could be thousands of messages generated in a few months within these forums. Manually evaluating the participation of students in such case is a significant challenge, considering the fact that current e-learning environments do not provide much information regarding the structure of interactions between students. There is a recent line of research on applying social network analysis (SNA) techniques to study these interactions. Here we propose to exploit SNA techniques, including community mining, in order to discover relevant structures in social networks we generate from student communications but also information networks we produce from the content of the exchanged messages. With visualization of these discovered relevant structures and the automated identification of central and peripheral participants, an instructor is provided with better means to assess participation in the online discussions. We implemented these new ideas in a toolbox, named Meerkat-ED, which automatically discovers relevant network structures, visualizes overall snapshots of interactions between the participants in the discussion forums, and outlines the leader/peripheral students. Moreover, it creates a hierarchical summarization of the discussed topics, which gives the instructor a quick view of what is under discussion. We believe exploiting the mining abilities of this toolbox would facilitate fair evaluation of students' participation in online courses.
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