Improving Student-AI Interaction Through Pedagogical Prompting: An Example in Computer Science Education
Ruiwei Xiao, Xinying Hou, Runlong Ye, Majeed Kazemitabaar, Nicholas Diana, Michael Liut, John Stamper

TL;DR
This paper introduces pedagogical prompting, a new method to teach students how to effectively interact with LLMs for learning, demonstrated through a CS education intervention that improved help-seeking skills and attitudes.
Contribution
It presents a theoretical framework for pedagogical prompting, an empirically tested instructional intervention, and insights into instructor attitudes, advancing AI-assisted learning in education.
Findings
Significant improvement in students' help-seeking skills
Positive attitudes and increased willingness to use prompts
Scalable approach suitable for integration into educational tools
Abstract
With the proliferation of large language model (LLM) applications since 2022, their use in education has sparked both excitement and concern. Recent studies consistently highlight students' (mis)use of LLMs can hinder learning outcomes. This work aims to teach students how to effectively prompt LLMs to improve their learning. We first proposed pedagogical prompting, a theoretically-grounded new concept to elicit learning-oriented responses from LLMs. To move from concept design to a proof-of-concept learning intervention in real educational settings, we selected early undergraduate CS education (CS1/CS2) as the example context. We began with a formative survey study with instructors (N=36) teaching early-stage undergraduate-level CS courses to inform the instructional design based on classroom needs. Based on their insights, we designed and developed a learning intervention through an…
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