Community-Based AI Learning: Redistributing Artificial Intelligence's Epistemic Authority in Education
For educators and researchers in AI education, this paper provides a conceptual framework to address inequities in how AI is taught and used, though it remains a theoretical proposal without empirical validation.
This perspective paper introduces community-based AI learning as a framework that repositions epistemic authority in education, grounding AI engagement in learners' lived and community-based epistemologies. It articulates three commitments—epistemic fine tuning, redistribution of authority, and situated discernment—to localize critical AI literacy.
As generative AI systems increasingly mediate learning, they are often treated as authoritative sources of knowledge. This perspective paper introduces community-based AI learning as a framework that repositions authority, grounding AI engagement in learners' lived and community-based epistemologies. Drawing from community-driven learning and constructionist traditions, we articulate three commitments: epistemic fine tuning, redistribution of authority, and situated discernment. Together, these processes localize critical AI literacy by calibrating trust, foregrounding community knowledge, and supporting collective judgment about when to design with, interrogate, or reject AI. We argue that equitable AI education requires negotiating authority through place, history, and social context.