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Knowledge organization through multiple representations in a computer-supported collaborative learning environment

机译:在计算机支持的协作学习环境中通过多种表示形式进行知识组织

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Computer-supported collaborative learning (CSCL) environments provide learners with multiple representational tools for storing, sharing, and constructing knowledge. However, little is known about how learners organize knowledge through multiple representations about complex socioscientific issues. Therefore, the purpose of this study was to investigate learners' knowledge organization (KO) through multiple representations in a CSCL environment. We designed a learning unit on nuclear energy and implemented it with a group of 20 college students. The participants used a web-based hypertext KO platform that incorporated three representational modes: textual, pictorial, and concept map. The platform interlinked learners' knowledge entries based on similar keywords. Utilizing mixed methods research we analyzed the individual entries and the knowledge base to determine KO both at the individual and the collective levels. We found that the density of the knowledge base was high; the learners mostly benefited from their text- and concept map-based entries, though the picture-based entries were also an important means for connecting entries with similar content and hence creating a dense knowledge base. Our results suggest that KO with multiple representations can create a more comprehensive knowledge base. Using distinct analytical approaches will allow CSCL researchers to better identify KO both at the individual and collective levels.
机译:计算机支持的协作学习(CSCL)环境为学习者提供了用于存储,共享和构建知识的多种表示工具。但是,关于学习者如何通过关于复杂的社会科学问题的多种表示来组织知识的知识鲜为人知。因此,本研究的目的是通过CSCL环境中的多种表示来研究学习者的知识组织(KO)。我们设计了一个核能学习单元,并与20名大学生一起实施了该单元。参与者使用了一个基于Web的超文本KO平台,该平台结合了三种表示模式:文本,图片和概念图。该平台基于相似的关键字将学习者的知识条目互连起来。利用混合方法研究,我们分析了个人条目和知识库,以确定个人和集体级别的KO。我们发现知识库的密度很高。尽管基于图片的条目也是连接具有相似内容的条目并因此创建密集的知识库的重要手段,但学习者大多从基于文本和概念图的条目中受益。我们的结果表明,具有多种表示形式的KO可以创建更全面的知识库。使用不同的分析方法将使CSCL研究人员能够更好地识别个体和集体水平的KO。

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