Affective-CARA: A Knowledge Graph Driven Framework for Culturally Adaptive Emotional Intelligence in HCI
Journal:
arXiv
Published Date:
Jun 17, 2025
Abstract
Culturally adaptive emotional responses remain a critical challenge in
affective computing. This paper introduces Affective-CARA, an agentic framework
designed to enhance user-agent interactions by integrating a Cultural Emotion
Knowledge Graph (derived from StereoKG) with Valence, Arousal, and Dominance
annotations, culture-specific data, and cross-cultural checks to minimize bias.
A Gradient-Based Reward Policy Optimization mechanism further refines responses
according to cultural alignment, affective appropriateness, and iterative user
feedback. A Cultural-Aware Response Mediator coordinates knowledge retrieval,
reinforcement learning updates, and historical data fusion. By merging
real-time user input with past emotional states and cultural insights,
Affective-CARA delivers narratives that are deeply personalized and sensitive
to diverse cultural norms. Evaluations on AffectNet, SEMAINE DB, and MERD
confirm that the framework consistently outperforms baseline models in
sentiment alignment, cultural adaptation, and narrative quality. Affective-CARA
achieved a Cultural Semantic Density of 9.32 out of 10 and lowered cultural
representation bias by 61% (KL-Divergence: 0.28), demonstrating robust
performance in generating ethical, adaptive responses. These findings suggest
the potential for more inclusive and empathetic interactions, making
Affective-CARA an avenue for fostering culturally grounded user experiences
across domains such as cross-cultural communication, mental health support, and
education.