预测本科学生成功的教育数据挖掘

Q1 Multidisciplinary Emerging Science Journal Pub Date : 2023-07-27 DOI:10.28991/esj-2023-sied2-013
David Jacob, R. Henriques
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引用次数: 0

摘要

预测学术成就在高等教育中至关重要,因为它被视为科学技术进步和国家经济社会发展的关键驱动力。本文旨在通过将教育数据挖掘(EDM)技术应用于葡萄牙商学院学士学位的历史数据,检索学术成功的最相关属性。我们提出了两个预测模型来对每个学生在入学和第一学年结束时的学业成功进行分类。我们实现了SEMMA方法,并尝试了几种机器学习算法,包括决策树、KNN、神经网络和SVM。入门级学术成功的最佳分类器是一个准确率为69%的随机森林。在第一学年结束时,MLP人工神经网络以85%的准确率获得了最佳性能。主要研究结果表明,在入学或第一年结束时,成绩以及学生以前的教育和对学校环境的参与对取得学业成功至关重要。Doi:10.28991/ESJ-2023-SIED2-013全文:PDF
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Educational Data Mining to Predict Bachelors Students’ Success
Predicting academic success is essential in higher education because it is perceived as a critical driver for scientific and technological advancement and countries’ economic and social development. This paper aims to retrieve the most relevant attributes for academic success by applying educational data mining (EDM) techniques to a Portuguese business school bachelor’s historical data. We propose two predictive models to classify each student regarding academic success at enrolment and the end of the first academic year. We implemented a SEMMA methodology and tried several machine learning algorithms, including decision trees, KNN, neural networks, and SVM. The best classifier for academic success at the entry-level reached is a random forest with an accuracy of 69%. At the end of the first academic year, an MLP artificial neural network’s best performance was achieved with an accuracy of 85%. The main findings show that at enrolment or the end of the first year, the grades and, thus, the student’s previous education and engagement with the school environment are decisive in achieving academic success. Doi: 10.28991/ESJ-2023-SIED2-013 Full Text: PDF
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来源期刊
Emerging Science Journal
Emerging Science Journal Multidisciplinary-Multidisciplinary
CiteScore
5.40
自引率
0.00%
发文量
155
审稿时长
10 weeks
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