Dual Pointer Network for Fast Extraction of Multiple Relations in a Sentence
Seongsik Park, Harksoo Kim
Abstract
Relation extraction is a type of information extraction task that recognizes semantic relationships between entities in a sentence. Many previous studies have focused on extracting only one semantic relation between two entities in a single sentence. However, multiple entities in a sentence are associated through various relations. To address this issue, we propose a relation extraction model based on a dual pointer network with a multi-head attention mechanism. The proposed model finds n-to-1 subject-object relations using a forward object decoder. Then, it finds 1-to-n subject-object relations using a backward subject decoder. Our experiments confirmed that the proposed model outperformed previous models, with an F1-score of 80.8% for the ACE-2005 corpus and an F1-score of 78.3% for the NYT corpus.
Results
| Task | Dataset | Metric | Value | Model |
|---|---|---|---|---|
| Relation Extraction | ACE 2005 | Relation classification F1 | 80.8 | Dual Pointer Network(multi-head) |