Towards Intelligent Geospatial Data Discovery: a knowledge graph-driven multi-agent framework powered by large language models
arXiv cs.AI / 3/24/2026
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Key Points
- The paper addresses shortcomings of existing geospatial data catalogs, which largely rely on keyword search and struggle to capture user intent due to semantic inconsistencies across distributed metadata standards.
- It proposes a knowledge-graph-driven multi-agent framework that uses a unified geospatial metadata ontology as a semantic mediation layer to align heterogeneous metadata.
- The framework builds a geospatial metadata knowledge graph to represent datasets and their multidimensional relationships, enabling more structured retrieval.
- A multi-agent architecture powered by large language models performs intent parsing, knowledge-graph retrieval, and answer synthesis to create an interpretable, closed-loop discovery workflow from query to results.
- Experimental use cases indicate improved intent matching accuracy, ranking quality, recall, and discovery transparency versus traditional keyword-based systems, positioning the approach for next-generation Autonomous GIS.
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