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4 months ago

End-to-end neural relation extraction using deep biaffine attention

Dat Quoc Nguyen; Karin Verspoor

End-to-end neural relation extraction using deep biaffine attention

Abstract

We propose a neural network model for joint extraction of named entities and relations between them, without any hand-crafted features. The key contribution of our model is to extend a BiLSTM-CRF-based entity recognition model with a deep biaffine attention layer to model second-order interactions between latent features for relation classification, specifically attending to the role of an entity in a directional relationship. On the benchmark "relation and entity recognition" dataset CoNLL04, experimental results show that our model outperforms previous models, producing new state-of-the-art performances.

Code Repositories

datquocnguyen/jointRE
Official
Mentioned in GitHub

Benchmarks

BenchmarkMethodologyMetrics
relation-extraction-on-conll04Biaffine attention
NER Macro F1: 86.2
RE+ Macro F1 : 64.4

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End-to-end neural relation extraction using deep biaffine attention | Papers | HyperAI