Corpus ID: 18620281

Improving Open Relation Extraction via Sentence Re-Structuring

@inproceedings{Schmidek2014ImprovingOR,
  title={Improving Open Relation Extraction via Sentence Re-Structuring},
  author={Jordan Schmidek and Denilson Barbosa},
  booktitle={LREC},
  year={2014}
}
Information Extraction is an important task in Natural Language Processing, consisting of finding a structured representation for the information expressed in natural language text. Two key steps in information extraction are identifying the entities mentioned in the text, and the relations among those entities. In the context of Information Extraction for the World Wide Web, unsupervised relation extraction methods, also called Open Relation Extraction (ORE) systems, have become prevalent, due… Expand
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