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Papers/Joint Extraction of Entities and Relations Based on a Nove...

Joint Extraction of Entities and Relations Based on a Novel Tagging Scheme

Suncong Zheng, Feng Wang, Hongyun Bao, Yuexing Hao, Peng Zhou, Bo Xu

2017-06-07ACL 2017 7Relation ExtractionJoint Entity and Relation Extraction
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Abstract

Joint extraction of entities and relations is an important task in information extraction. To tackle this problem, we firstly propose a novel tagging scheme that can convert the joint extraction task to a tagging problem. Then, based on our tagging scheme, we study different end-to-end models to extract entities and their relations directly, without identifying entities and relations separately. We conduct experiments on a public dataset produced by distant supervision method and the experimental results show that the tagging based methods are better than most of the existing pipelined and joint learning methods. What's more, the end-to-end model proposed in this paper, achieves the best results on the public dataset.

Results

TaskDatasetMetricValueModel
Relation ExtractionNYT-singleF149.5NovelTagging
Relation ExtractionNYT11-HRLF147.9NovelTagging
Relation ExtractionWebNLGF128.3NovelTagging

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