Advancing Large Language Models for Spatiotemporal and Semantic Association Mining of Similar Environmental Events
Yuanyuan Tian, Wenwen Li, Lei Hu, Xiao Chen, Michael Brook, Michael, Brubaker, Fan Zhang, Anna K. Liljedahl

TL;DR
This paper presents a novel LLM-based framework for mining and recommending similar environmental events using spatiotemporal and semantic analysis, improving scalability and accuracy over traditional methods.
Contribution
It introduces a Geo-Time Re-ranking strategy and applies advanced embedding models to enhance environmental event retrieval and recommendation.
Findings
Achieved top performance on LEO Network dataset
Effective integration of spatial, temporal, and semantic criteria
Framework applicable to various geospatial data search tasks
Abstract
Retrieval and recommendation are two essential tasks in modern search tools. This paper introduces a novel retrieval-reranking framework leveraging Large Language Models (LLMs) to enhance the spatiotemporal and semantic associated mining and recommendation of relevant unusual climate and environmental events described in news articles and web posts. This framework uses advanced natural language processing techniques to address the limitations of traditional manual curation methods in terms of high labor cost and lack of scalability. Specifically, we explore an optimized solution to employ cutting-edge embedding models for semantically analyzing spatiotemporal events (news) and propose a Geo-Time Re-ranking (GT-R) strategy that integrates multi-faceted criteria including spatial proximity, temporal association, semantic similarity, and category-instructed similarity to rank and identify…
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Taxonomy
TopicsData Mining Algorithms and Applications · Data Management and Algorithms · Geographic Information Systems Studies
