Nourhan Ehab
2025
Structured Knowledge meets GenAI: A Framework for Logic-Driven Language Models
Farida Helmy Eldessouky
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Nourhan Ehab
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Carolin Schindler
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Mervat Abuelkheir
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Wolfgang Minker
Proceedings of the Workshop on Generative AI and Knowledge Graphs (GenAIK)
Large Language Models (LLMs) excel at generating fluent text but struggle with context sensitivity, logical reasoning, and personalization without extensive fine-tuning. This paper presents a logical modulator: an adaptable communication layer between Knowledge Graphs (KGs) and LLMs as a way to address these limitations. Unlike direct KG-LLM integrations, our modulator is domain-agnostic and incorporates logical dependencies and commonsense reasoning in order to achieve contextual personalization. By enhancing KG interaction, this method will produce linguistically coherent and logically sound outputs, increasing interpretability and reliability in generative AI.