A Systematic Review on Process Mining for Curricular Analysis

Daniel Calegari, Andrea Delgado
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Abstract

Educational Process Mining (EPM) is a data analysis technique that is used to improve educational processes. It is based on Process Mining (PM), which involves gathering records (logs) of events to discover process models and analyze the data from a process-centric perspective. One specific application of EPM is curriculum mining, which focuses on understanding the learning program students follow to achieve educational goals. This is important for institutional curriculum decision-making and quality improvement. Therefore, academic institutions can benefit from organizing the existing techniques, capabilities, and limitations. We conducted a systematic literature review to identify works on applying PM to curricular analysis and provide insights for further research. From the analysis of 22 primary studies, we found that results can be classified into five categories concerning the objectives they pursue: the discovery of educational trajectories, the identification of deviations in the observed behavior of students, the analysis of bottlenecks, the analysis of stopout and dropout problems, and the generation of recommendation. Moreover, we identified some open challenges and opportunities, such as standardizing for replicating studies to perform cross-university curricular analysis and strengthening the connection between PM and data mining for improving curricular analysis.
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课程分析过程挖掘系统综述
教育过程挖掘(EPM)是一种用于改进教育过程的数据分析技术。它以流程挖掘(PM)为基础,即收集事件记录(日志)以发现流程模型,并从以流程为中心的角度分析数据。课程挖掘是 EPM 的一个具体应用,其重点是了解学生为实现教育目标而遵循的学习计划。这对机构课程决策和质量改进非常重要。因此,学术机构可以从整理现有技术、能力和局限性中获益。我们进行了系统的文献综述,以确定将项目管理应用于课程分析的作品,并为进一步研究提供启示。通过对 22 项主要研究的分析,我们发现这些成果可按其追求的目标分为五类:发现教育轨迹、识别所观察到的学生行为中的差异、分析瓶颈、分析停学和辍学问题以及提出建议。此外,我们还发现了一些尚待解决的挑战和机遇,例如为开展跨大学课程分析而进行的标准化重复研究,以及为改进课程分析而加强项目管理与数据挖掘之间的联系。
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