Beyond analytics: Using computer-aided methods in educational research to extend qualitative data analysis

IF 2 3区 工程技术 Q3 COMPUTER SCIENCE, INTERDISCIPLINARY APPLICATIONS
Camilo Vieira, Juan D. Ortega-Alvarez, Alejandra J. Magana, Mireille Boutin
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Abstract

This study proposes and demonstrates how computer-aided methods can be used to extend qualitative data analysis by quantifying qualitative data, and then through exploration, categorization, grouping, and validation. Computer-aided approaches to inquiry have gained important ground in educational research, mostly through data analytics and large data set processing. We argue that qualitative data analysis methods can also be supported and extended by computer-aided methods. In particular, we posit that computing capacities rationally applied can expand the innate human ability to recognize patterns and group qualitative information based on similarities. We propose a principled approach to using machine learning in qualitative education research based on the three interrelated elements of the assessment triangle: cognition, observation, and interpretation. Through the lens of the assessment triangle, the study presents three examples of qualitative studies in engineering education that have used computer-aided methods for visualization and grouping. The first study focuses on characterizing students' written explanations of programming code, using tile plots and hierarchical clustering with binary distances to identify the different approaches that students used to self-explain. The second study looks into students' modeling and simulation process and elicits the types of knowledge that they used in each step through a think-aloud protocol. For this purpose, we used a bubble plot and a k-means clustering algorithm. The third and final study explores engineering faculty's conceptions of teaching, using data from semi-structured interviews. We grouped these conceptions based on coding similarities, using Jaccard's similarity coefficient, and visualized them using a treemap. We conclude this manuscript by discussing some implications for engineering education qualitative research.

Abstract Image

超越分析:在教育研究中使用计算机辅助方法扩展定性数据分析
本研究提出并展示了如何利用计算机辅助方法,通过量化定性数据,然后通过探索、分类、分组和验证,扩展定性数据分析。计算机辅助探究方法已在教育研究中占据重要地位,主要是通过数据分析和大型数据集处理。我们认为,定性数据分析方法也可以得到计算机辅助方法的支持和扩展。特别是,我们认为合理应用计算机能力可以扩展人类与生俱来的识别模式和根据相似性对定性信息进行分组的能力。我们提出了在定性教育研究中使用机器学习的原则性方法,其基础是评估三角的三个相互关联的要素:认知、观察和解释。通过评估三角的视角,本研究介绍了工程教育领域使用计算机辅助方法进行可视化和分组的三个定性研究实例。第一项研究侧重于描述学生对编程代码的书面解释,使用瓦片图和二元距离分层聚类来识别学生用于自我解释的不同方法。第二项研究考察了学生的建模和仿真过程,并通过 "思考-朗读 "协议了解他们在每个步骤中使用的知识类型。为此,我们使用了气泡图和 k-means 聚类算法。第三项也是最后一项研究利用半结构式访谈的数据,探讨了工程学院教师的教学理念。我们根据编码的相似性,使用 Jaccard 相似系数对这些概念进行了分组,并使用树状图将其可视化。最后,我们讨论了本手稿对工程教育定性研究的一些启示。
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来源期刊
Computer Applications in Engineering Education
Computer Applications in Engineering Education 工程技术-工程:综合
CiteScore
7.20
自引率
10.30%
发文量
100
审稿时长
6-12 weeks
期刊介绍: Computer Applications in Engineering Education provides a forum for publishing peer-reviewed timely information on the innovative uses of computers, Internet, and software tools in engineering education. Besides new courses and software tools, the CAE journal covers areas that support the integration of technology-based modules in the engineering curriculum and promotes discussion of the assessment and dissemination issues associated with these new implementation methods.
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