使用机器学习预测大一新生的加入行为-一个案例研究

Pawan Kumar, Varun Kumar, R. Sobti
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引用次数: 2

摘要

随着竞争的加剧,大学正试图接触有抱负的学生,让他们入学。然而,在所有被大学录取的学生中,许多人实际上并没有进入大学。本研究旨在评估应用机器学习的潜力,使教育机构能够预测新生的加入状态。同时,我们试图利用CART算法了解影响加入行为的因素。获得了高达80%的分类准确率,得出了机器学习在该问题领域值得应用的结论。影响学生入校行为的重要因素包括奖学金、已支付的费用、宿舍设施状况和资格考试成绩。
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Predicting Joining Behavior of Freshmen Students using Machine Learning – A Case Study
With the increasing competition, universities are trying to reach out to aspiring students to get them enrolled. However, out of all the students enrolled to a university, many do not actually join. This research study aims to evaluate the potential of applying machine learning to enable educational institutes predict joining status of their freshmen students. Also, we attempt to understand the factors affecting joining behavior using CART algorithm. Obtaining classification accuracy up to 80 percent, it is concluded that machine learning is worth applying in this problem domain. Important factors affecting joining behavior include scholarship offered to student, fee paid so far, status of hostel facility availed and marks in qualifying examination.
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