Participatory, not Punitive: Student-Driven AI Policy Recommendations in a Design Classroom

April 12, 2026 ยท Grace Period ยท ๐Ÿ› CHI 2026

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Authors Kaoru Seki, Manisha Vijay, Yasmine Kotturi arXiv ID 2604.10851 Category cs.HC: Human-Computer Interaction Citations 0 Venue CHI 2026
Abstract
Generative AI is reshaping education, yet most university AI policies are written without students and focus on penalizing misuse. This top-down approach sidelines those most affected from decisions that shape their everyday learning, resulting in confusion and fear about acceptable use. We examine how participatory, student-driven AI policy design can address this disconnect. We report on a three-part workshop series in a graduate design course at a minority-serving university in the U.S., where two student leaders facilitated discussions without faculty present. Eight participants shared candid accounts of their AI use, co-authored ten policy recommendations, and visualized them in a zine that circulated across campus. The resulting policies surfaced concerns absent from top-down governance, such as the double standard of requiring students to disclose or abstain from AI use while faculty face no such expectations. We argue that engaging students in AI governance carries value beyond the resulting policies, and offer transferable strategies for fostering participation across disciplines -- a model for calling students in rather than calling students
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