Publikation
Challenges and Opportunities of Moderating Usage of Large Language Models in Education
Lars Krupp; Steffen Steinert; Maximilian Kiefer-Emmanouilidis; Karina E. Avila; Paul Lukowicz; Jochen Kuhn; Stefan Küchemann; Jakob Karolus
In: Proceedings of the International Conference on Mobile and Ubiquitous Multimedia. International Conference on Mobile and Ubiquitous Multimedia (MUM-2024), December 1-4, Stockholm, Sweden, MUM '24, ISBN 9798400712838, Association for Computing Machinery, 2024.
Zusammenfassung
The increased presence of large language models (LLMs) in educational settings has ignited debates concerning negative repercussions, including overreliance and inadequate task reflection. Our work advocates moderated usage of such models, designed in a way that supports students and encourages critical thinking. We developed two moderated interaction methods with ChatGPT: hint-based assistance and presenting multiple answer choices. In a study with students (N=40) answering physics questions, we compared the effects of our moderated models against two baseline settings: unmoderated ChatGPT access and internet searches. We analyzed the interaction strategies and found that the moderated versions exhibited less unreflected usage (e.g., copy & paste) compared to the unmoderated condition. However, neither ChatGPT-supported condition could match the ratio of reflected usage present in internet searches. Our research highlights the potential benefits of moderating language models, showing a research direction toward designing effective AI-supported educational strategies.