Enriching building function classification using Large Language Model embeddings of OpenStreetMap Tags
Abdulkadir Memduhoğlu,
Nir Fulman,
Alexander Zipf
Abstract:Automated methods for building function classification are essential due to restricted access to official building use data. Existing approaches utilize traditional Natural Language Processing (NLP) techniques to analyze textual data representing human activities, but they struggle with the ambiguity of semantic contexts. In contrast, Large Language Models (LLMs) excel at capturing the broader context of language. This study presents a method that uses LLMs to interpret OpenStreetMap (OSM) tags, combining them… Show more
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