Drop-out in programming courses – prediction and prevention
Journal of Applied Research in Higher Education
ISSN: 2050-7003
Article publication date: 31 July 2019
Issue publication date: 17 January 2020
Abstract
Purpose
An ideal learning analytics tool for programming exercises performs the role of a lecturer who monitors the code development, provides customized support and identifies students at risk to drop out. But a reliable prediction and prevention of drop-out is difficult, due to the huge problem space in programming tasks and variety of solutions and programming strategies. The purpose of this paper is to tackle this problem by, first, identifying activity patterns that indicate students at risk; and, second, finding reasons behind specific activity pattern, for identification of instructional interventions that prevent drop-out.
Design/methodology/approach
The authors combine two investigation strategies: first, learning analytic techniques (decision trees) are applied on features gathered from students, while completing programming exercises, in order to classify predictors for drop-outs. Second, the authors determine cognitive, motivational and demographic learner characteristics based on a questionnaire. Finally, both parts are related with a correlation analysis.
Findings
It was possible to identify generic variables that could predict early and later drop-outs. For students who drop out early, the most relevant variable is the delay time between availability of the assignment and the first login. The correlation analysis indicates a relation with prior programming experience in years and job occupation per week. For students who drop out later in the course, the number of errors within the first assignment is the most relevant predictor, which correlates with prior programming skills.
Originality/value
The findings indicate a relation between activity patterns and learner characteristics. Based on the results, the authors deduce instructional interventions to support students and to prevent drop-outs.
Keywords
Acknowledgements
This work was embedded in the “Industrial-eLab” project and it is partially funded by the German Federal Ministry of Education and Research (Funding number 16DHL1033).
Citation
Hawlitschek, A., Köppen, V., Dietrich, A. and Zug, S. (2020), "Drop-out in programming courses – prediction and prevention", Journal of Applied Research in Higher Education, Vol. 12 No. 1, pp. 124-136. https://doi.org/10.1108/JARHE-02-2019-0035
Publisher
:Emerald Publishing Limited
Copyright © 2019, Emerald Publishing Limited