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Ningyu Zhang Xiang Chen Xin Xie Shumin Deng Chuanqi Tan Mosha Chen Fei Huang Luo Si Huajun Chen

Abstract
Document-level relation extraction aims to extract relations among multiple entity pairs from a document. Previously proposed graph-based or transformer-based models utilize the entities independently, regardless of global information among relational triples. This paper approaches the problem by predicting an entity-level relation matrix to capture local and global information, parallel to the semantic segmentation task in computer vision. Herein, we propose a Document U-shaped Network for document-level relation extraction. Specifically, we leverage an encoder module to capture the context information of entities and a U-shaped segmentation module over the image-style feature map to capture global interdependency among triples. Experimental results show that our approach can obtain state-of-the-art performance on three benchmark datasets DocRED, CDR, and GDA.
Code Repositories
Benchmarks
| Benchmark | Methodology | Metrics |
|---|---|---|
| relation-extraction-on-cdr | DocuNet-SciBERTbase | F1: 76.3 |
| relation-extraction-on-docred | DocuNet-RoBERTa-large | F1: 64.55 Ign F1: 62.4 |
| relation-extraction-on-gda | DocuNet-SciBERTbase | F1: 85.3 |
| relation-extraction-on-redocred | DocuNET | F1: 77.87 Ign F1: 77.26 |
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