Towards Enhancing Linked Data Retrieval in Conversational UIs using Large Language Models
- URL: http://arxiv.org/abs/2409.16220v1
- Date: Tue, 24 Sep 2024 16:31:33 GMT
- Title: Towards Enhancing Linked Data Retrieval in Conversational UIs using Large Language Models
- Authors: Omar Mussa, Omer Rana, BenoƮt Goossens, Pablo Orozco-Terwengel, Charith Perera,
- Abstract summary: This paper examines the integration of Large Language Models (LLMs) within existing systems.
By leveraging the advanced natural language understanding capabilities of LLMs, our method improves RDF entity extraction within web systems.
The evaluation of this methodology shows a marked enhancement in system expressivity and the accuracy of responses to user queries.
- Score: 1.3980986259786221
- License: http://creativecommons.org/licenses/by/4.0/
- Abstract: Despite the recent broad adoption of Large Language Models (LLMs) across various domains, their potential for enriching information systems in extracting and exploring Linked Data (LD) and Resource Description Framework (RDF) triplestores has not been extensively explored. This paper examines the integration of LLMs within existing systems, emphasising the enhancement of conversational user interfaces (UIs) and their capabilities for data extraction by producing more accurate SPARQL queries without the requirement for model retraining. Typically, conversational UI models necessitate retraining with the introduction of new datasets or updates, limiting their functionality as general-purpose extraction tools. Our approach addresses this limitation by incorporating LLMs into the conversational UI workflow, significantly enhancing their ability to comprehend and process user queries effectively. By leveraging the advanced natural language understanding capabilities of LLMs, our method improves RDF entity extraction within web systems employing conventional chatbots. This integration facilitates a more nuanced and context-aware interaction model, critical for handling the complex query patterns often encountered in RDF datasets and Linked Open Data (LOD) endpoints. The evaluation of this methodology shows a marked enhancement in system expressivity and the accuracy of responses to user queries, indicating a promising direction for future research in this area. This investigation not only underscores the versatility of LLMs in enhancing existing information systems but also sets the stage for further explorations into their potential applications within more specialised domains of web information systems.
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