Understanding Student Interaction with AI-Powered Next-Step Hints: Strategies and Challenges

Publication date

2026-02-17

Authors

Birillo, Anastasiia
Rostovskii, Aleksei
Golubev, Yaroslav
Keuning, HiekeISNI 000000049290580X

Editors

Advisors

Supervisors

Document Type

Part of book
Open Access logo

License

cc_by

Abstract

Automated feedback generation plays a crucial role in enhancing personalized learning experiences in computer science education. Among different types of feedback, next-step hint feedback is particularly important, as it provides students with actionable steps to progress towards solving programming tasks. This study investigates how students interact with an AI-driven next-step hint system in an in-IDE learning environment. We gathered and analyzed a dataset from 34 students solving Kotlin tasks, containing detailed hint interaction logs. We applied process mining techniques and identified 16 common interaction scenarios. Semi-structured interviews with 6 students revealed strategies for managing unhelpful hints, such as adapting partial hints or modifying code to generate variations of the same hint. These findings, combined with our publicly available dataset, offer valuable opportunities for future research and provide key insights into student behavior, helping improve hint design for enhanced learning support.

Keywords

Automated Feedback, In-IDE Learning, LLMs, Next-Step Hints, Computer Science (miscellaneous), Education

Citation

Birillo, A, Rostovskii, A, Golubev, Y & Keuning, H 2026, Understanding Student Interaction with AI-Powered Next-Step Hints : Strategies and Challenges. in SIGCSE TS 2026 - Proceedings of the 57th ACM Technical Symposium on Computer Science Education V.1. Association for Computing Machinery, pp. 134-140, 57th SIGCSE Technical Symposium on Computer Science Education, SIGCSE TS 2026, St. Louis, United States, 18/02/26. https://doi.org/10.1145/3770762.3772544, conference