Towards a Success Model for Automated Programming Assessment Systems Used as a Formative Assessment Tool
June 08, 2023 Β· Declared Dead Β· π Annual Conference on Innovation and Technology in Computer Science Education
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Authors
Clemens Sauerwein, Tobias Antensteiner, Stefan Oppl, Iris Groher, Alexander Meschtscherjakov, Philipp Zech, Ruth Breu
arXiv ID
2306.04958
Category
cs.SE: Software Engineering
Citations
4
Venue
Annual Conference on Innovation and Technology in Computer Science Education
Last Checked
4 months ago
Abstract
The assessment of source code in university education is a central and important task for lecturers of programming courses. In doing so, educators are confronted with growing numbers of students having increasingly diverse prerequisites, a shortage of tutors, and highly dynamic learning objectives. To support lecturers in meeting these challenges, the use of automated programming assessment systems (APASs), facilitating formative assessments by providing timely, objective feedback, is a promising solution. Measuring the effectiveness and success of these platforms is crucial to understanding how such platforms should be designed, implemented, and used. However, research and practice lack a common understanding of aspects influencing the success of APASs. To address these issues, we have devised a success model for APASs based on established models from information systems as well as blended learning research and conducted an online survey with 414 students using the same APAS. In addition, we examined the role of mediators intervening between technology-, system- or self-related factors, respectively, and the users' satisfaction with APASs. Ultimately, our research has yielded a model of success comprising seven constructs influencing user satisfaction with an APAS.
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