Structured Relation Discovery using Generative Models.

EMNLP '11: Proceedings of the Conference on Empirical Methods in Natural Language Processing(2011)

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摘要
We explore unsupervised approaches to relation extraction between two named entities; for instance, the semantic bornIn relation between a person and location entity. Concretely, we propose a series of generative probabilistic models, broadly similar to topic models, each which generates a corpus of observed triples of entity mention pairs and the surface syntactic dependency path between them. The output of each model is a clustering of observed relation tuples and their associated textual expressions to underlying semantic relation types. Our proposed models exploit entity type constraints within a relation as well as features on the dependency path between entity mentions. We examine effectiveness of our approach via multiple evaluations and demonstrate 12% error reduction in precision over a state-of-the-art weakly supervised baseline.
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关键词
observed relation tuples,relation extraction,semantic bornIn relation,underlying semantic relation type,entity mention pair,entity type constraint,location entity,dependency path,observed triple,surface syntactic dependency path,generative model,structured relation discovery
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