如何预测ESPAM MFL学生的学业成功?基于决策树的初步研究

Jéssica Morales Carrillo, J. Parraga-Alava
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引用次数: 10

摘要

高等教育机构的成功可以通过学生的表现来衡量。确定提高学生学业成功率的偏好、因素或行为是有帮助的,因为它可以帮助教育决策者充分计划行动,以促进他们的成功结果。在本文中,我们通过基于决策树的算法作为初步方法来确定ESPAM MFL学生的学业成功。我们使用了三个构建的分类器:C5.0,随机森林和CART,它们应用于具有1086个实例的数据集,这些实例对应于来自计算机科学职业的学生的专业科目的个人和学术信息。我们将学习成绩作为一个多类分类问题来训练和测试算法,其中每个学生都有一个互斥的表现:可接受、良好、优秀。我们通过分类问题的性能指标来评估算法,验证它们的分类能力。最后,基于其性能,认为CART算法是最佳算法。它达到的最高分类指标值是准确率= 52%,准确率=49%,召回率=53%。
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How Predicting The Academic Success of Students of the ESPAM MFL?: A Preliminary Decision Trees Based Study
The success of higher education institutions can be measured by the students performance. Identifying preferences, factors or behaviours that increase the academic success rate of students is helpful since it can aid educational decision makers to adequately plan actions to promote their success outcomes. In this paper, we determine academic success of students of the ESPAM MFL through decision trees based algorithms as a preliminary approach. We use three built classifiers: C5.0, Random Forest and CART which are applied on a dataset with 1086 instances corresponding to personal and academic information about professionalizing subjects of students from the Computer Science Career. We train and test the algorithms considering the academic success as a multi-class classification problem, where each student has a performance mutually exclusive: Acceptable, Good, Excellent. We evaluate the algorithms verifying their classification capacity through performance metrics for classification problems. Finally, the CART algorithm was considered as the best algorithm based on its performance. The highest classification metrics values achieved by it are accuracy = 52%, precision=49% and recall=53%.
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