Domain Independent Knowledge Base Population from Structured and Unstructured Data Sources

Gregory, Michelle (Pacific Northwest National Laboratory) | McGrath, Liam (Pacific Northwest National Laboratory) | Bell, Eric Belanga (Pacific Northwest National Laboratory) | O' (Pacific Northwest National Laboratory) | Hara, Kelly (Pacific Northwest National Laboratory) | Domico, Kelly

AAAI Conferences 

In this paper we introduce a system that is designed to automatically populate a knowledge base from both structured and unstructured text given an ontology. Our system is designed as a modular end-to-end system that takes structured or unstructured data as input, extracts information, maps relevant information to an ontology, and finally disambiguates entities in the knowledge base. The novelty of our approach is that it is domain independent and can easily be adapted to new ontologies and domains. Unlike most knowledge base population systems, ours includes entity detection. This feature allows one to employ very complex ontologies that include events and the entities that are involved in the events.

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