Predicting Students' Outcome in an Introductory Programming Course: Leveraging the Student Background

Kohler, Jacqueline; Hidalgo, Luciano; Jara, Jose Luis

Abstract

For a lot of beginners, learning to program is challenging; similarly, for teachers, it is difficult to draw on students’ prior knowledge to help the process because it is not quite obvious which abilities are significant for developing programming skills. This paper seeks to shed some light on the subject by identifying which previously recorded variables have the strongest correlation with passing an introductory programming course. To do this, a data set was collected including data from four cohorts of students who attended an introductory programming course, common to all Engineering programmes at a Chilean university. With this data set, several classifiers were built, using different Machine Learning methods, to determine whether students pass or fail the course. In addition, models were trained on subsets of students by programme duration and engineering specialisation. An accuracy of 68% was achieved, but the analysis by specialisation shows that both accuracy and the significant variables vary depending on the programme. The fact that classification methods select different predictors depending on the specialisation suggests that there is a variety of factors that affect a student’s ability to succeed in a programming course, such as overall academic performance, language proficiency, and mathematical and scientific skills. © 2023 by the authors.

Más información

Título según WOS: Predicting Students' Outcome in an Introductory Programming Course: Leveraging the Student Background
Título según SCOPUS: Predicting Students’ Outcome in an Introductory Programming Course: Leveraging the Student Background
Título de la Revista: Applied Sciences (Switzerland)
Volumen: 13
Número: 21
Editorial: Multidisciplinary Digital Publishing Institute (MDPI)
Fecha de publicación: 2023
Idioma: English
DOI:

10.3390/app132111994

Notas: ISI, SCOPUS