Discovering Relations to Augment a Web-scale Knowledge Base Constructed from the Web

@inproceedings{Kim2016DiscoveringRT,
  title={Discovering Relations to Augment a Web-scale Knowledge Base Constructed from the Web},
  author={Jinho Kim and Sung-Hyon Myaeng},
  booktitle={WIMS '16},
  year={2016}
}
  • Jinho Kim, Sung-Hyon Myaeng
  • Published in WIMS '16 2016
  • Computer Science
  • We propose a method for automatically discovering new knowledge from a knowledge base consisting of entity-relation-entity triples, constructed automatically from the Web. This method infers new relations between entity pairs by exploiting the structure of massive graphs, which can be obtained by linking existing entity-relation-entity triples. After identifying an unlinked entity pair likely to have a strong association from the graphs and a connected component around it, the method learns a… CONTINUE READING

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