Predicting Computer Engineering students' dropout in Cuban Higher Education with pre-enrollment and early performance data
We present an educational data analytics case study aimed at the early detection of potential dropout in Computer Engineering studies in Cuba. We have employed institutional data of 456 students and performed several experiments for predicting their permanency into three (promotion, repetition, and...
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doaj-90e4cb9d7f96429bae64506c0776995e2020-11-25T03:31:19ZengOmniaScienceJournal of Technology and Science Education2013-63742020-09-0110224125810.3926/jotse.922233Predicting Computer Engineering students' dropout in Cuban Higher Education with pre-enrollment and early performance dataNiurys Lázaro Alvarez0Zoraida Callejas1David Griol2Universidad de las Ciencias InformáticasUniversity of GranadaUniversity of GranadaWe present an educational data analytics case study aimed at the early detection of potential dropout in Computer Engineering studies in Cuba. We have employed institutional data of 456 students and performed several experiments for predicting their permanency into three (promotion, repetition, and dropout) or two classes (promoting, not promoting). We have also tested a combination of classification features for training and testing decision trees and neural networks; including information obtained at the time of enrollment, after the first semester and after the first academic year. Our results show a considerable accuracy using all features (96.71%). Using only the features available at the time of enrolment and after the first semester we obtain very positive results (68.86% and 93.85% accuracy respectively) with a high recall of non-promoting students. Thus, it is possible to obtain an early assessment of the risk of dropout that can help defining prevention policies.http://www.jotse.org/index.php/jotse/article/view/922dropout, retention, promotion, higher education, data analysis, computer engineering, automatic classification |
collection |
DOAJ |
language |
English |
format |
Article |
sources |
DOAJ |
author |
Niurys Lázaro Alvarez Zoraida Callejas David Griol |
spellingShingle |
Niurys Lázaro Alvarez Zoraida Callejas David Griol Predicting Computer Engineering students' dropout in Cuban Higher Education with pre-enrollment and early performance data Journal of Technology and Science Education dropout, retention, promotion, higher education, data analysis, computer engineering, automatic classification |
author_facet |
Niurys Lázaro Alvarez Zoraida Callejas David Griol |
author_sort |
Niurys Lázaro Alvarez |
title |
Predicting Computer Engineering students' dropout in Cuban Higher Education with pre-enrollment and early performance data |
title_short |
Predicting Computer Engineering students' dropout in Cuban Higher Education with pre-enrollment and early performance data |
title_full |
Predicting Computer Engineering students' dropout in Cuban Higher Education with pre-enrollment and early performance data |
title_fullStr |
Predicting Computer Engineering students' dropout in Cuban Higher Education with pre-enrollment and early performance data |
title_full_unstemmed |
Predicting Computer Engineering students' dropout in Cuban Higher Education with pre-enrollment and early performance data |
title_sort |
predicting computer engineering students' dropout in cuban higher education with pre-enrollment and early performance data |
publisher |
OmniaScience |
series |
Journal of Technology and Science Education |
issn |
2013-6374 |
publishDate |
2020-09-01 |
description |
We present an educational data analytics case study aimed at the early detection of potential dropout in Computer Engineering studies in Cuba. We have employed institutional data of 456 students and performed several experiments for predicting their permanency into three (promotion, repetition, and dropout) or two classes (promoting, not promoting). We have also tested a combination of classification features for training and testing decision trees and neural networks; including information obtained at the time of enrollment, after the first semester and after the first academic year. Our results show a considerable accuracy using all features (96.71%). Using only the features available at the time of enrolment and after the first semester we obtain very positive results (68.86% and 93.85% accuracy respectively) with a high recall of non-promoting students. Thus, it is possible to obtain an early assessment of the risk of dropout that can help defining prevention policies. |
topic |
dropout, retention, promotion, higher education, data analysis, computer engineering, automatic classification |
url |
http://www.jotse.org/index.php/jotse/article/view/922 |
work_keys_str_mv |
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