Keywords: Graph Neural Networks, Affective Computing, Attention Mechanisms, Emotion Modeling
TL;DR: We present Affect2Act, a graph attention model treating emotions as interconnected nodes for context-dependent reasoning. On a synthetic benchmark, it outperforms baselines, showing promise for affective AI.
Abstract: Current affective computing systems focus on recognizing emotions but struggle to use them for reasoning, which limits human-AI interaction. We introduce Affect2Act, a graph attention model that represents emotions as interconnected nodes and learns context-dependent relationships. This structure enables flexible reasoning over emotional states. In a synthetic decision-making benchmark, Affect2Act achieves 87.67\% accuracy with an emotional balance of 65.47\%, slightly exceeding Graph Convolutional Networks (86.73\%) and clearly surpassing the attention-only (70.67\%) and MLP (45.67\%) baselines. These findings suggest that graph-structured emotional representations can support more robust, emotion-informed AI systems and open new directions for affective reasoning.
Poster Pdf: pdf
Submission Number: 41
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