Prediction of University-Level Academic Performance through Machine Learning Mechanisms and Supervised Methods

IF 0.4 Q4 ENGINEERING, MULTIDISCIPLINARY
Ingenieria Pub Date : 2022-11-20 DOI:10.14483/23448393.19514
Leonardo Emiro Contreras Bravo, Nayibe Nieves-Pimiento, Karolina Gonzalez-Guerrero
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引用次数: 1

Abstract

Context:  In the education sector, variables have been identified which considerably affect students’ academic performance. In the last decade, research has been carried out from various fields such as psychology, statistics, and data analytics in order to predict academic performance. Method: Data analytics, especially through Machine Learning tools, allows predicting academic performance using supervised learning algorithms based on academic, demographic, and sociodemographic variables. In this work, the most influential variables in the course of students’ academic life are selected through wrapping, embedded, filter, and assembler methods, as well as the most important characteristics semester by semester using Machine Learning algorithms (Decision Trees, KNN, SVC, Naive Bayes, LDA), which were implemented using the Python language. Results: The results of the study show that the KNN is the model that best predicts academic performance for each of the semesters, followed by Decision Trees, with precision values that oscillate around 80 and 78,5% in some semesters. Conclusions: Regarding the variables, it cannot be said that a student’s per-semester academic average necessarily influences the prediction of academic performance for the next semester. The analysis of these results indicates that the prediction of academic performance using Machine Learning tools is a promising approach that can help improve students’ academic life allow institutions and teachers to take actions that contribute to the teaching-learning process.
基于机器学习机制和监督方法的高校学业成绩预测
背景:在教育部门,已经确定了对学生学习成绩有很大影响的变量。在过去的十年里,人们从心理学、统计学和数据分析等各个领域进行了研究,以预测学习成绩。方法:数据分析,特别是通过机器学习工具,可以使用基于学术、人口统计和社会人口统计变量的监督学习算法来预测学习成绩。在这项工作中,通过包装、嵌入、过滤和汇编方法来选择学生学术生活过程中最具影响力的变量,以及使用Python语言实现的机器学习算法(决策树、KNN、SVC、Naive Bayes、LDA)逐学期选择最重要的特征。结果:研究结果表明,KNN是最能预测每个学期学习成绩的模型,其次是决策树,在某些学期的精度值在80%和78.5%左右波动。结论:关于变量,不能说学生每学期的平均学业成绩一定会影响对下学期学习成绩的预测。对这些结果的分析表明,使用机器学习工具预测学习成绩是一种很有前途的方法,可以帮助改善学生的学术生活,使机构和教师能够采取有助于教学过程的行动。
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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来源期刊
Ingenieria
Ingenieria ENGINEERING, MULTIDISCIPLINARY-
CiteScore
0.70
自引率
25.00%
发文量
33
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