Karalar Halit, Kapucu Ceyhun, Gürüler Hüseyin
Department of Computer Education and Instructional Technologies, Faculty of Education, Muğla Sıtkı Koçman University, Muğla, Turkey.
Department of Informatics, Muğla Sıtkı Koçman University, Muğla, Turkey.
Int J Educ Technol High Educ. 2021;18(1):63. doi: 10.1186/s41239-021-00300-y. Epub 2021 Dec 2.
Predicting students at risk of academic failure is valuable for higher education institutions to improve student performance. During the pandemic, with the transition to compulsory distance learning in higher education, it has become even more important to identify these students and make instructional interventions to avoid leaving them behind. This goal can be achieved by new data mining techniques and machine learning methods. This study took both the synchronous and asynchronous activity characteristics of students into account to identify students at risk of academic failure during the pandemic. Additionally, this study proposes an optimal ensemble model predicting students at risk using a combination of relevant machine learning algorithms. Performances of over two thousand university students were predicted with an ensemble model in terms of gender, degree, number of downloaded lecture notes and course materials, total time spent in online sessions, number of attendances, and quiz score. Asynchronous learning activities were found more determinant than synchronous ones. The proposed ensemble model made a good prediction with a specificity of 90.34%. Thus, practitioners are suggested to monitor and organize training activities accordingly.
预测有学业失败风险的学生对高等教育机构提高学生成绩很有价值。在疫情期间,随着高等教育转向强制远程学习,识别这些学生并进行教学干预以避免他们掉队变得更加重要。这一目标可以通过新的数据挖掘技术和机器学习方法来实现。本研究考虑了学生的同步和异步活动特征,以识别疫情期间有学业失败风险的学生。此外,本研究提出了一种最优集成模型,该模型使用相关机器学习算法的组合来预测有风险的学生。使用集成模型根据性别、学位、下载的讲义和课程材料数量、在线课程总时长、出勤次数和测验分数对两千多名大学生的表现进行了预测。发现异步学习活动比同步学习活动更具决定性。所提出的集成模型做出了良好的预测,特异性为90.34%。因此,建议从业者据此监测并组织培训活动。