Skip to main content
Passa alla visualizzazione normale.

ANTONIO CHELLA

Towards robot affective appraisal linking inner speech and emotion

Abstract

Recent studies in Robotics and AI suggest that robots “thinking out loud” can foster positive human feedback and support collaborative goal achievement. By externalizing their internal reasoning, robots enhance transparency and ex- plainability, which are crucial for trust and robustness in human–robot interac- tion. This work investigates the role of robot inner speech in supporting affective appraisal, focusing on the emergence, coherence, and interpretability of emo- tionally grounded evaluations. While the relationship between inner speech and architecture for affective appraisal. Grounded in appraisal theories, the proposed model employs inner speech to simulate internal reflection, enabling the identification and evaluation of contex- tual variables relevant to affective assessment. Through this internal dialogue, the robot structures its appraisal process and externalizes it, allowing human partners to access and interpret the underlying affective reasoning. The model is evaluated by comparing its appraisal dynamics with norma- tive emotional patterns observed in adults under stress, and by assessing the interpretability of the robot’s affective behavior through human observation. Results indicate that the model produces coherent and context-sensitive eval- uations, improving upon a widely adopted computational model of emotion in terms of plausibility and transparency.