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{Yaser Al-Onaizan Kalpit Dixit}

Abstract
Relation Extraction is the task of identifying entity mention spans in raw text and then identifying relations between pairs of the entity mentions. Recent approaches for this span-level task have been token-level models which have inherent limitations. They cannot easily define and implement span-level features, cannot model overlapping entity mentions and have cascading errors due to the use of sequential decoding. To address these concerns, we present a model which directly models all possible spans and performs joint entity mention detection and relation extraction. We report a new state-of-the-art performance of 62.83 F1 (prev best was 60.49) on the ACE2005 dataset.
Benchmarks
| Benchmark | Methodology | Metrics |
|---|---|---|
| relation-extraction-on-ace-2005 | Span-level | Cross Sentence: No NER Micro F1: 85.98 Sentence Encoder: ELMo |
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