应用数据挖掘技术预测学生辍学:一个案例研究

B. Pérez, C. Castellanos, D. Correal
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引用次数: 30

摘要

在许多教育机构中,防止学生辍学被认为是非常重要的。在本文中,我们描述了一个教育数据分析案例研究的结果,该研究的重点是检测哥伦比亚一所大学入学7年后系统工程(SE)本科生的退学情况。使用特征工程过程扩展和丰富原始数据。我们的实验结果表明,简单的算法在识别辍学预测因子方面达到了可靠的精度水平。比较决策树、Logistic回归和Na¨ıve贝叶斯结果,提出最佳方案。此外,沃森分析进行评估,以建立服务的可用性为非专业用户。提出了通过识别潜在原因来降低辍学率的主要结果。此外,我们提出了一些与数据质量有关的发现,以改善学生数据收集过程。
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Applying Data Mining Techniques to Predict Student Dropout: A Case Study
The prevention of students dropping out is considered very important in many educational institutions. In this paper we describe the results of an educational data analytics case study focused on detection of dropout of System Engineering (SE) undergraduate students after 7 years of enrollment in a Colombian university. Original data is extended and enriched using a feature engineering process. Our experimental results showed that simple algorithms achieve reliable levels of accuracy to identify predictors of dropout. Decision Trees, Logistic Regression and Na¨ıve Bayes results were compared in order to propose the best option. Also, Watson Analytics is evaluated to establish the usability of the service for a non expert user. Main results are presented in order to decrease the dropout rate by identifying potential causes. In addition, we present some findings related to data quality to improve the students data collection process.
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