Classification of Learner Retention using Machine Learning Approaches

Nur Amalina Diyana Suhaimi, Norshaliza Binti Kamaruddin, Thirumeni T Subramaniam, Nilam Nur Amir Sjarif, Maslin Bte Masrom, Nurazean Maarop
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引用次数: 1

Abstract

Learner retention issues require a huge commitment from a university as the process of monitoring learners' re-registration status from the beginning of each semester until they graduate can be quite tedious. When the number of learners who re-register for a subsequent semester is low, it not only affects the university's image but also its ranking and reputation in the education sector. Therefore, the university must identify, at an early stage, the likelihood of a learner is not retained in the following semester. This study proposed to experiment with the classification methods for solving the issue of learner retention at Open University Malaysia by comparing three Supervised Machine Learning algorithms namely Logistic Regression, Support Vector Machine, and k-Nearest Neighbor. The performance of these algorithms was evaluated based on accuracy, precision, recall, and f-measure. It is determined that Support Vector Machine showed the best accuracy in classifying the learners' retention rate with 80% accuracy. The benefit of performing Machine Learning is that it enables the identification of at-risk learners at the earliest opportunity and therefore implement the earliest interventions to retain them.
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使用机器学习方法的学习者保留率分类
学习者保留问题需要大学做出巨大的承诺,因为从每个学期开始直到他们毕业,监控学习者重新注册状态的过程可能非常繁琐。如果下学期重新注册的学生人数少,不仅会影响大学的形象,还会影响大学在教育界的排名和声誉。因此,大学必须在早期阶段确定学习者的可能性,而不是在下一个学期保留。本研究提出通过比较三种监督机器学习算法,即逻辑回归、支持向量机和k近邻,来实验解决马来西亚开放大学学习者保留问题的分类方法。这些算法的性能根据准确性、精密度、召回率和f-measure进行评估。结果表明,支持向量机对学习者保留率的分类准确率最高,达到80%。执行机器学习的好处是,它能够在最早的机会识别有风险的学习者,从而实施最早的干预措施来留住他们。
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