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GRACE: Generating Socially Appropriate Robot Actions Leveraging LLMs and Human Explanations

Fethiye Irmak Doğan, Umut Ozyurt, Gizem Cinar, Hatice Güneş

Year
2025
Citations
3

Abstract

When operating in human environments, robots need to handle complex tasks while both adhering to social norms and accommodating individual preferences. For instance, based on common sense knowledge, a household robot can pre-dict that it should avoid vacuuming during a social gathering, but it may still be uncertain whether it should vacuum before or after having guests. In such cases, integrating common-sense knowledge with human preferences, often conveyed through human explanations, is fundamental yet a challenge for existing systems. In this paper, we introduce GRACE, a novel approach addressing this while generating socially appropriate robot actions. GRACE leverages common sense knowledge from LLMs, and it integrates this knowledge with human explanations through a generative network. The bidirectional structure of GRACE enables robots to refine and enhance LLM predictions by utilizing human explanations and makes robots capable of generating such explanations for human-specified actions. Our evaluations show that integrating human explanations boosts GRACE's performance, where it outperforms several baselines and provides sensible explanations.

Keywords

RobotComputer scienceHuman–robot interactionHuman–computer interactionArtificial intelligence

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