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3 months ago

End-to-End Neural Relation Extraction with Global Optimization

{Yue Zhang Meishan Zhang Guohong Fu}

End-to-End Neural Relation Extraction with Global Optimization

Abstract

Neural networks have shown promising results for relation extraction. State-of-the-art models cast the task as an end-to-end problem, solved incrementally using a local classifier. Yet previous work using statistical models have demonstrated that global optimization can achieve better performances compared to local classification. We build a globally optimized neural model for end-to-end relation extraction, proposing novel LSTM features in order to better learn context representations. In addition, we present a novel method to integrate syntactic information to facilitate global learning, yet requiring little background on syntactic grammars thus being easy to extend. Experimental results show that our proposed model is highly effective, achieving the best performances on two standard benchmarks.

Benchmarks

BenchmarkMethodologyMetrics
relation-extraction-on-ace-2005Global
Cross Sentence: No
NER Micro F1: 83.6
RE+ Micro F1: 57.5
Sentence Encoder: biLSTM
relation-extraction-on-conll04Global
NER Micro F1: 85.6
RE+ Micro F1: 67.8

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End-to-End Neural Relation Extraction with Global Optimization | Papers | HyperAI