通过多选题提高牙科和医科学生的自我调节学习能力:使用机器学习的评估研究

Emilie Leth Rasmussen, Malthe Have Musaeus, Mads R. Dahl, Henrik Løvschall, Peter Musaeus
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引用次数: 0

摘要

本文报告了一项混合方法研究,该研究利用机器学习和主题分析来调查学生对多选题(MCQ)的评价。研究重点是医学和牙科学生的自我调节学习经验和动机。我们对奥胡斯大学开发的两个系统进行了评估:医科学生使用的 "MED MCQ "和牙科学生使用的 "MCQ 解剖学"。我们通过 SurveyXact 中的两项调查进行评估,调查对象包括 126 名医科学生和 70 名牙科学生。我们对自由文本回复进行了主题建模。机器学习模型确定了两组学生,他们以不同的方式体验到系统对学习过程的激励和促进作用。学生可以选择问题的呈现形式,并在教师的指导下独立回答问题,从而提高了自我调节学习的能力。文章讨论了教育工作者和开发人员如何利用 MCQ 来促进学生的学习,以及如何分析开放式问题。我们讨论了使用机器学习和将 MCQ 系统集成到教学中的潜力。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Enhancing dental and medical students’ self-regulated learning through multiple choice questions: An evaluative study using machine learning
This article reports a mixed methods study that uses machine learning and thematic analysis to investigate student evaluation of multiple-choice questions (MCQ). The focus is on medical and dental students' experience of self-regulated learning and motivation. We evaluate two systems developed at Aarhus University: "MED MCQ" used by medical students and "MCQ anatomy" used by dental students. We evaluate through two surveys in SurveyXact with responses from 126 medical students and 70 dental students. We use topic modelling over free text responses. The machine-learning model identifies two groups of students who, in different ways, both experience the system as motivating and facilitating their learning process. The students experience increased self-regulated learning by being able to choose the form of presentation of questions and answer questions independently of the instructor. The article discusses how educators and developers can use MCQs to promote student learning and how to analyze open-ended questions. We discuss the potential for using machine learning and integrating MCQ systems into teaching.
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