Interpretable Deep Learning for University Dropout Prediction

Máté Baranyi, Marcell Nagy, Roland Molontay
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引用次数: 34

Abstract

The early identification of college students at risk of dropout is of great interest and importance all over the world, since the early leaving of higher education is associated with considerable personal and social costs. In Hungary, especially in STEM undergraduate programs, the dropout rate is particularly high, much higher than the EU average. In this work, using advanced machine learning models such as deep neural networks and gradient boosted trees, we aim to predict the final academic performance of students at the Budapest University of Technology and Economics. The dropout prediction is based on the data that are available at the time of enrollment. In addition to the predictions, we also interpret our machine learning models with the help of state-of-the-art interpretable machine learning techniques such as permutation importance and SHAP values. The accuracy and AUC of the best-performing deep learning model are 72.4% and 0.771, respectively that slightly outperforms XGBoost, the cutting-edge benchmark model for tabular data.
用于大学辍学预测的可解释深度学习
早期识别有辍学风险的大学生是全世界都非常感兴趣和重要的,因为高等教育的早期辍学与相当大的个人和社会成本有关。在匈牙利,特别是在STEM本科专业,辍学率特别高,远高于欧盟的平均水平。在这项工作中,使用先进的机器学习模型,如深度神经网络和梯度增强树,我们的目标是预测布达佩斯科技经济大学学生的最终学业成绩。退学预测是基于入学时可用的数据。除了预测之外,我们还借助最先进的可解释机器学习技术(如排列重要性和SHAP值)来解释我们的机器学习模型。表现最好的深度学习模型的准确率和AUC分别为72.4%和0.771,略优于XGBoost,这是最先进的表格数据基准模型。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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