基于数字文本注释的学生聚类研究

Keith Ying, Maiga Chang, Andrew F. Chiarella, Kinshuk, J. Heh
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引用次数: 10

摘要

学生们经常在阅读时使用高亮、划线、在文本空白处写评论和标记来注释文本。这些可能有不同的功能,并将反映每个学生的目标和对文本的理解。本研究提出了两种简单的生物学启发的方法来表示学生注释的模式,并根据他们注释之间的相似性对学生进行聚类;生成的注释是简单的高亮显示。为了验证所提出方法的有效性,研究将这些方法的处理速度与Matlab中实现的通用分层聚类算法进行了比较,并将聚类的准确率与人工评分者创建的聚类进行了比较。结果表明,这两种方法都比一般的层次聚类算法更有效、更准确。提出的方法可以作为现有学习管理系统和电子书阅读器的附加组件来实现,以自动向学生提供由其他人(同龄人或过去的学生)进行的重要笔记和注释,这些笔记和注释的行为模式和风格与学生相似。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Clustering Students Based on their Annotations of a Digital Text
Students often annotate texts they are reading using highlighting, underlining, and written comments and marks in the margins of the text. These may serve various functions and will reflect each student's goals and understanding of the text. This research proposes two simple biology-inspired approaches to represent the patterns of student annotations and to cluster students based on the similarity between their annotations; the annotations produced were simple highlighting. To verify the effectiveness of the proposed approaches, the research compared the processing speed of these approaches with generic hierarchical clustering algorithm implemented in Matlab and compared the accuracy of the clusters with the clusters created by human raters. The results show that both of the proposed approaches are more efficient and accurate than the generic hierarchical clustering algorithm. The proposed methodology can be implemented as an add-on to existing learning management systems and e-book readers, to automatically offer the students important notes and annotations conducted by others (either peers or students in the past) who have similar annotation behaviour pattern and style to the students.
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