Unsupervised Open Relation Extraction
2018-01-22Code Available0· sign in to hype
Hady Elsahar, Elena Demidova, Simon Gottschalk, Christophe Gravier, Frederique Laforest
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- github.com/hadyelsahar/relation-discovery-2-entitiesOfficialIn papernone★ 0
Abstract
We explore methods to extract relations between named entities from free text in an unsupervised setting. In addition to standard feature extraction, we develop a novel method to re-weight word embeddings. We alleviate the problem of features sparsity using an individual feature reduction. Our approach exhibits a significant improvement by 5.8% over the state-of-the-art relation clustering scoring a F1-score of 0.416 on the NYT-FB dataset.