#困惑和超越:使用学生的标签来检测课程论坛中的困惑

Shay A. Geller, Nicholas Hoernle, Y. Gal, A. Segal, Amy X. Zhang, David R Karger, M. Facciotti, Michele Igo
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引用次数: 10

摘要

学生的困惑是学习的障碍,会导致他们失去动力,对课程材料不感兴趣。然而,在大型课程中发现学生的困惑既费时又耗资源。本文提供了一种在在线论坛中检测混淆的新方法,该方法基于利用学生自我报告的情感状态的力量(使用一组预定义的标签进行报告)。它提出了一个标签混淆的规则,基于学生在他们的帖子中的标签,这与教师的判断是一致的。我们使用这个标记规则来通知自动分类器的设计,以便在测试集中没有自我报告的标签时进行混淆检测。我们在使用Nota Bene注释平台的大型生物学课程中演示了这种方法。这项工作为教师提供更好的支持工具,以发现和减轻在线课程中的困惑奠定了基础。
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#Confused and beyond: detecting confusion in course forums using students' hashtags
Students' confusion is a barrier for learning, contributing to loss of motivation and to disengagement with course materials. However, detecting students' confusion in large-scale courses is both time and resource intensive. This paper provides a new approach for confusion detection in online forums that is based on harnessing the power of students' self-reported affective states (reported using a set of pre-defined hashtags). It presents a rule for labeling confusion, based on students' hashtags in their posts, that is shown to align with teachers' judgement. We use this labeling rule to inform the design of an automated classifier for confusion detection for the case when there are no self-reported hashtags present in the test set. We demonstrate this approach in a large scale Biology course using the Nota Bene annotation platform. This work lays the foundation to empower teachers with better support tools for detecting and alleviating confusion in online courses.
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