Personalised Explainable Robots Using LLMs
Ferran Gebellí, Lavinia Hriscu, Raquel Ros, Séverin Lemaignan, Alberto Sanfeliu, Anaís Garrell
- 发表年份
- 2025
- 引用次数
- 4
摘要
In the field of Human-Robot Interaction (HRI), a key challenge lies in enabling humans to comprehend the decisions and behaviours of robots. One promising approach involves leveraging Theory of Mind (ToM) frameworks, wherein a robot estimates the mental model that a user holds about its functioning and compares this with the representation of its internal mental model. This comparison allows the robot to identify potential mismatches and generate communicative actions to bridge such gaps. Effective communication requires the robot to maintain unique mental models for each user and personalise explanations based on past interactions. To address this, we propose an architecture grounded in Large Language Models (LLMs) that operationalises this theoretical framework. We demonstrate the feasibility of this approach through qualitative examples, showcasing responses provided by a robot patrolling a geriatric hospital.
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