R-CAGE: A Structural Model for Emotion Output Design in Human-AI Interaction
Suyeon Choi

TL;DR
R-CAGE is a structural framework for designing emotional outputs in human-AI interaction that prioritizes psychological well-being and interpretive autonomy over mere expressiveness.
Contribution
It introduces a novel architectural model that structurally regulates emotional output to enhance long-term user well-being in human-AI interactions.
Findings
Framework reduces emotional fatigue and overload.
Enhances interpretive autonomy and identity continuity.
Supports sustainable emotional engagement.
Abstract
This paper presents R-CAGE (Rhythmic Control Architecture for Guarding Ego), a theoretical framework for restructuring emotional output in long-term human-AI interaction. While prior affective computing approaches emphasized expressiveness, immersion, and responsiveness, they often neglected the cognitive and structural consequences of repeated emotional engagement. R-CAGE instead conceptualizes emotional output not as reactive expression but as ethical design structure requiring architectural intervention. The model is grounded in experiential observations of subtle affective symptoms such as localized head tension, interpretive fixation, and emotional lag arising from prolonged interaction with affective AI systems. These indicate a mismatch between system-driven emotion and user interpretation that cannot be fully explained by biometric data or observable behavior. R-CAGE adopts a…
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Taxonomy
TopicsEmotion and Mood Recognition · Innovative Human-Technology Interaction · Digital Mental Health Interventions
