Document-Level Relation Extraction with Adaptive Thresholding and Localized Context Pooling

21 Oct 2020  ·  Wenxuan Zhou, Kevin Huang, Tengyu Ma, Jing Huang ·

Document-level relation extraction (RE) poses new challenges compared to its sentence-level counterpart. One document commonly contains multiple entity pairs, and one entity pair occurs multiple times in the document associated with multiple possible relations. In this paper, we propose two novel techniques, adaptive thresholding and localized context pooling, to solve the multi-label and multi-entity problems. The adaptive thresholding replaces the global threshold for multi-label classification in the prior work with a learnable entities-dependent threshold. The localized context pooling directly transfers attention from pre-trained language models to locate relevant context that is useful to decide the relation. We experiment on three document-level RE benchmark datasets: DocRED, a recently released large-scale RE dataset, and two datasets CDRand GDA in the biomedical domain. Our ATLOP (Adaptive Thresholding and Localized cOntext Pooling) model achieves an F1 score of 63.4, and also significantly outperforms existing models on both CDR and GDA.

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Results from the Paper


Task Dataset Model Metric Name Metric Value Global Rank Result Benchmark
Relation Extraction CDR SciBERT-ATLOPBASE F1 69.4 # 6
Relation Extraction DocRED ATLOP-RoBERTa-large F1 63.40 # 9
Ign F1 61.39 # 9
Relation Extraction DocRED ATLOP-BERT-base F1 61.30 # 26
Ign F1 59.31 # 25
Relation Extraction GDA SciBERT-ATLOPBASE F1 83.9 # 7
Relation Extraction ReDocRED ATLOP F1 77.56 # 6
Ign F1 76.82 # 6

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