The Empty Quadrant: AI Teammates for Embodied Field Learning
Hyein Kim, Sung Park

TL;DR
This paper introduces Field Atlas, a novel AI framework that acts as an epistemic teammate in embodied, place-bound learning environments, emphasizing sensemaking through trajectories rather than static products.
Contribution
It proposes a new theoretical framework grounded in 4E cognition and active inference, shifting AI's role from instruction to sensemaking in unstructured field learning.
Findings
Demonstrated the framework in a museum scenario.
Trajectories serve as process-based evidence resistant to AI fabrication.
Reorients AIED towards embodied, dialogic sensemaking.
Abstract
For four decades, AIED research has rested on what we term the Sedentary Assumption: the unexamined design commitment to a stationary learner seated before a screen. Mobile learning and museum guides have moved learners into physical space, and context-aware systems have delivered location-triggered content -- yet these efforts predominantly cast AI in the role of information-de-livery tool rather than epistemic partner. We map this gap through a 2 x 2 matrix (AI Role x Learning Environment) and identify an undertheorized intersection: the configuration in which AI serves as an epistemic teammate during unstruc-tured, place-bound field inquiry and learning is assessed through trajectory rather than product. To fill it, we propose Field Atlas, a framework grounded in embod-ied, embedded, enactive, and extended (4E) cognition, active inference, and dual coding theory that shifts AIED's…
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Taxonomy
TopicsEmbodied and Extended Cognition · Augmented Reality Applications · Innovative Human-Technology Interaction
