基于机器学习的高等教育学生辍学风险分析评分的开发

Robinson Crusoé da Cruz, Renato Correa Juliano, Alinne Cristinne Correa Souza, Francisco Carlos Monteiro Souza
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引用次数: 1

摘要

高等教育辍学造成了巨大的社会、经济和学术损失。导致学生辍学的主要原因是学生难以跟上课程内容、课程结构不合理以及资金不足。近年来,出现了几项研究,试图通过确定可能导致辍学的因素,或通过创建基于机器学习的分类器,来识别有辍学风险的学生群体。然而,研究主要集中在分类指标上,即二元结果,表示学生是否在风险群体中。这种类型的分析是很重要的,然而,它并没有显示学生在他们的学术生活中的表现变化,除了不提供一个成绩分数内的分数。不同的是,这个项目在创建分数时使用了机器学习技术,以便提供一个温度计来分析学生与辍学组的接近程度。初步结果是有希望的,因为当使用KNN创建Score时,有可能开发出具有实验中发现的最佳超参数结果的Score。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Desenvolvimento de um Score para análise de risco de evasão de estudantes do Ensino Superior baseado em Aprendizado de Máquina
Dropping out of Higher Education contributes to great social, eco- nomic and academic loss. Among the main reasons for dropping out are the student’s difficulty in following the content, the struc- ture proposed by the course and the lack of financial resources. In recent years, several studies have emerged to try to identify groups of students at risk of dropping out, either by identifying the factors that can contribute to dropout, or by creating classifiers based on Machine Learning. However, researches focus essentially on categorical indicators, that is, with binary results, which denote that the student is or is not in the risk group. This type of anal- ysis is important, however, it does not show the variation in the student’s performance during their academic life, in addition to not offering a score within a performance score. Differently, this project use Machine Learning techniques in the creation of a Score, in order to provide a thermometer to analyze how close the student is or not to the dropout group. Preliminary results are promising, because when using KNN to create the Score, it was possible to develop a Score with the best result of hyperparameters found in the experiments.
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