학술논문

Neural Relation Extraction on Wikipedia Tables for Augmenting Knowledge Graphs
Document Type
Conference
Source
Proceedings of the 29th ACM International Conference on Information & Knowledge Management. :2133-2136
Subject
benchmarking
information extraction
web tables
Language
English
Abstract
Knowledge Graph Augmentation is the task of adding missing facts to an incomplete knowledge graph to improve its effectiveness in applications such as web search and question answering. State-of-the-art methods rely on information extraction from running text, leaving rich sources of facts such as tables behind. We help close this gap with a neural method that uses contextual information surrounding a table in a Wikipedia article to extract relations between entities appearing in the same row of a table or between the entity of said article and entities appearing in the table. We trained and tested our method on a much larger dataset compared to previous work which we have made public and observed experimentally that our method is very promising for the task.

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