Towards a Barrier-free GeoQA Portal: Natural Language Interaction with Geospatial Data Using Multi-Agent LLMs and Semantic Search
- URL: http://arxiv.org/abs/2503.14251v1
- Date: Tue, 18 Mar 2025 13:39:46 GMT
- Title: Towards a Barrier-free GeoQA Portal: Natural Language Interaction with Geospatial Data Using Multi-Agent LLMs and Semantic Search
- Authors: Yu Feng, Puzhen Zhang, Guohui Xiao, Linfang Ding, Liqiu Meng,
- Abstract summary: We propose a GeoQA Portal using a multi-agent Large Language Model framework for seamless natural language interaction with geospatial data.<n>Case studies, evaluations, and user tests confirm its effectiveness for non-experts, bridging GIS complexity and public access.
- Score: 2.9658923973538034
- License: http://arxiv.org/licenses/nonexclusive-distrib/1.0/
- Abstract: A Barrier-Free GeoQA Portal: Enhancing Geospatial Data Accessibility with a Multi-Agent LLM Framework Geoportals are vital for accessing and analyzing geospatial data, promoting open spatial data sharing and online geo-information management. Designed with GIS-like interaction and layered visualization, they often challenge non-expert users with complex functionalities and overlapping layers that obscure spatial relationships. We propose a GeoQA Portal using a multi-agent Large Language Model framework for seamless natural language interaction with geospatial data. Complex queries are broken into subtasks handled by specialized agents, retrieving relevant geographic data efficiently. Task plans are shown to users, boosting transparency. The portal supports default and custom data inputs for flexibility. Semantic search via word vector similarity aids data retrieval despite imperfect terms. Case studies, evaluations, and user tests confirm its effectiveness for non-experts, bridging GIS complexity and public access, and offering an intuitive solution for future geoportals.
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