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arxiv:2404.08020

Augmenting Knowledge Graph Hierarchies Using Neural Transformers

Published on Apr 11, 2024
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Abstract

Large language models are used to generate and augment hierarchies in knowledge graphs, improving coverage and organization.

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Knowledge graphs are useful tools to organize, recommend and sort data. Hierarchies in knowledge graphs provide significant benefit in improving understanding and compartmentalization of the data within a knowledge graph. This work leverages large language models to generate and augment hierarchies in an existing knowledge graph. For small (<100,000 node) domain-specific KGs, we find that a combination of few-shot prompting with one-shot generation works well, while larger KG may require cyclical generation. We present techniques for augmenting hierarchies, which led to coverage increase by 98% for intents and 99% for colors in our knowledge graph.

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