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    RAGGAE for HERBS: Testing the Explanatory Performance of Ontology-powered LLMs for Human Explanation of Robotic Behaviors
    with Agnese Augello, Edoardo Datteri, Antonio Lieto, and Maria Rausa
    Proceedings of the 17Th International Conference on Social Robotics, Icsr 2025, Springer 1 (1): 12. 2025.
    In this work we present and test a RAG-based model called RAGGAE (i.e. RAG for the General Analysis of Explanans) tested in the context of Human Explanation of Robotic BehaviorS (HERBS). The RAGGAE model makes use of an ontology of explanations, enriching the knowledge of state of the art general purpose Large Language Models like Google Gemini 2.0 Flash, DeepSeek R1 and GPT-4o. The results show that the combination of a general LLM with a symbolic, and philosophically grounded, ontology can be …Read more