Use of machine learning to analyze chemistry card sort tasks

IF 2.6 2区 教育学 Q1 EDUCATION & EDUCATIONAL RESEARCH
Logan Sizemore, Brian Hutchinson and Emily Borda
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Abstract

Education researchers are deeply interested in understanding the way students organize their knowledge. Card sort tasks, which require students to group concepts, are one mechanism to infer a student's organizational strategy. However, the limited resolution of card sort tasks means they necessarily miss some of the nuance in a student's strategy. In this work, we propose new machine learning strategies that leverage a potentially richer source of student thinking: free-form written language justifications associated with student sorts. Using data from a university chemistry card sort task, we use vectorized representations of language and unsupervised learning techniques to generate qualitatively interpretable clusters, which can provide unique insight in how students organize their knowledge. We compared these to machine learning analysis of the students’ sorts themselves. Machine learning-generated clusters revealed different organizational strategies than those built into the task; for example, sorts by difficulty or even discipline. There were also many more categories generated by machine learning for what we would identify as more novice-like sorts and justifications than originally built into the task, suggesting students’ organizational strategies converge when they become more expert-like. Finally, we learned that categories generated by machine learning for students’ justifications did not always match the categories for their sorts, and these cases highlight the need for future research on students’ organizational strategies, both manually and aided by machine learning. In sum, the use of machine learning to analyze results from a card sort task has helped us gain a more nuanced understanding of students’ expertise, and demonstrates a promising tool to add to existing analytic methods for card sorts.

利用机器学习分析化学卡片分类任务
教育研究人员对了解学生组织知识的方式深感兴趣。卡片分类任务要求学生对概念进行分组,是推断学生组织策略的一种机制。然而,卡片分类任务的分辨率有限,这意味着它们必然会忽略学生策略中的一些细微差别。在这项工作中,我们提出了新的机器学习策略,利用潜在的更丰富的学生思维来源:与学生分类相关的自由形式书面语言理由。利用大学化学卡片分类任务的数据,我们使用语言的矢量化表示和无监督学习技术来生成可定性解释的聚类,这可以为学生如何组织知识提供独特的见解。我们将这些聚类与对学生分类本身的机器学习分析进行了比较。机器学习生成的聚类显示了与任务中内置的聚类不同的组织策略;例如,按难度甚至学科分类。此外,机器学习生成的类别中,我们认为新手类的分类和理由比任务中原有的类别要多得多,这表明当学生变得更像专家时,他们的组织策略就会趋于一致。最后,我们还了解到,机器学习为学生的理由所生成的类别并不总是与他们的排序类别相匹配,这些情况凸显了未来研究学生组织策略的必要性,包括人工研究和机器学习辅助研究。总之,使用机器学习来分析卡片分类任务的结果,有助于我们更细致地了解学生的专业知识,并为现有的卡片分类分析方法提供了一个很有前途的工具。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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来源期刊
CiteScore
4.80
自引率
26.70%
发文量
64
审稿时长
6-12 weeks
期刊介绍: The journal for teachers, researchers and other practitioners in chemistry education.
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