Analysis of Machine Learning Classification Approaches for Predicting Students’ Programming Aptitude

Author:

Çetinkaya Ali1ORCID,Baykan Ömer Kaan1,Kırgız Havva2ORCID

Affiliation:

1. Department of Computer Engineering, Konya Technical University, Konya 42250, Türkiye

2. Konya Science Center, Konya 42100, Türkiye

Abstract

With the increasing prevalence and significance of computer programming, a crucial challenge that lies ahead of teachers and parents is to identify students adept at computer programming and direct them to relevant programming fields. As most studies on students’ coding abilities focus on elementary, high school, and university students in developed countries, we aimed to determine the coding abilities of middle school students in Turkey. We first administered a three-part spatial test to 600 secondary school students, of whom 400 completed the survey and the 20-level Classic Maze course on Code.org. We then employed four machine learning (ML) algorithms, namely, support vector machine (SVM), decision tree, k-nearest neighbor, and quadratic discriminant to classify the coding abilities of these students using spatial test and Code.org platform data. SVM yielded the most accurate results and can thus be considered a suitable ML technique to determine the coding abilities of participants. This article promotes quality education and coding skills for workforce development and sustainable industrialization, aligned with the United Nations Sustainable Development Goals.

Publisher

MDPI AG

Subject

Management, Monitoring, Policy and Law,Renewable Energy, Sustainability and the Environment,Geography, Planning and Development,Building and Construction

Reference68 articles.

1. Code.org (2023, June 10). More İnformation, History, and Philosophy. Available online: https://code.org/.

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3. Designing for deeper learning in a blended computer science course for middle school students;Grover;Comput. Sci. Educ.,2015

4. Grover, S., Pea, R., and Cooper, S. (2016, January 2–5). Factors influencing computer science learning in middle school. Proceedings of the 47th ACM Technical Symposium on Computing Science Education, Memphis, TN, USA.

5. Tukiainen, M., and Mönkkönen, E. (2002, January 18–21). Programming Aptitude Testing as a Prediction of Learning to Program. Proceedings of the PPIG, London, UK.

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