KRR-Oxford/LM-ontology-concept-placement
Language Model based ontology concept placement
This project helps domain experts and knowledge managers automatically categorize and place new concepts within an existing ontology. You input a text containing a new term along with your established ontology, and it outputs the suggested hierarchical relationships (edges) for integrating that new term into the ontology structure. This tool is for anyone who manages large, evolving knowledge bases and needs to efficiently expand them with new information.
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Use this if you need to systematically integrate novel concepts mentioned in text into a complex, pre-existing ontology.
Not ideal if you are looking to build an ontology from scratch or only need to extract entities without formal classification.
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Language
Python
License
MIT
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Last pushed
Nov 15, 2024
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