A Survey on Feedback Types in Automated Programming Assessment Systems

Eduard Frankford, Tobias Antensteiner, Michael Vierhauser, Clemens Sauerwein, Vivien Wallner, Iris Groher, Reinhold Plösch, Ruth Breu

Research output: Working paper and reportsPreprint

Abstract

With the recent rapid increase in digitization across all major industries, acquiring programming skills has increased the demand for introductory programming courses. This has further resulted in universities integrating programming courses into a wide range of curricula, including not only technical studies but also business and management fields of study. Consequently, additional resources are needed for teaching, grading, and tutoring students with diverse educational backgrounds and skills. As part of this, Automated Programming Assessment Systems (APASs) have emerged, providing scalable and high-quality assessment systems with efficient evaluation and instant feedback. Commonly, APASs heavily rely on predefined unit tests for generating feedback, often limiting the scope and level of detail of feedback that can be provided to students. With the rise of Large Language Models (LLMs) in recent years, new opportunities have emerged as these technologies can enhance feedback quality and personalization. To investigate how different feedback mechanisms in APASs are perceived by students, and how effective they are in supporting problem-solving, we have conducted a large-scale study with over 200 students from two different universities. Specifically, we compare baseline Compiler Feedback, standard Unit Test Feedback, and advanced LLM-based Feedback regarding perceived quality and impact on student performance. Results indicate that while students rate unit test feedback as the most helpful, AI-generated feedback leads to significantly better performances. These findings suggest combining unit tests and AI-driven guidance to optimize automated feedback mechanisms and improve learning outcomes in programming education.
Original languageEnglish
Number of pages20
DOIs
Publication statusPublished - 21 Oct 2025

Publication series

NamearXiv.org
No.2510.18923

Fields of science

  • 102022 Software development
  • 502050 Business informatics
  • 102040 Quantum computing 
  • 509026 Digitalisation research
  • 102034 Cyber-physical systems
  • 502032 Quality management
  • 102020 Medical informatics
  • 102006 Computer supported cooperative work (CSCW)
  • 102027 Web engineering
  • 102016 IT security
  • 503015 Subject didactics of technical sciences
  • 102015 Information systems
  • 211928 Systems engineering

JKU Focus areas

  • Digital Transformation

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