Markus Eberts, Adrian Ulges
We present a joint model for entity-level relation extraction from documents. In contrast to other approaches - which focus on local intra-sentence mention pairs and thus require annotations on mention level - our model operates on entity level. To do so, a multi-task approach is followed that builds upon coreference resolution and gathers relevant signals via multi-instance learning with multi-level representations combining global entity and local mention information. We achieve state-of-the-art relation extraction results on the DocRED dataset and report the first entity-level end-to-end relation extraction results for future reference. Finally, our experimental results suggest that a joint approach is on par with task-specific learning, though more efficient due to shared parameters and training steps.
| Task | Dataset | Metric | Value | Model |
|---|---|---|---|---|
| Relation Extraction | DocRED | F1 | 60.4 | JEREX-BERT-base |
| Relation Extraction | DocRED | Ign F1 | 58.44 | JEREX-BERT-base |
| Relation Extraction | ReDocRED | F1 | 72.57 | JEREX |
| Relation Extraction | ReDocRED | Ign F1 | 71.45 | JEREX |
| Relation Extraction | DocRED | Relation F1 | 40.38 | JEREX |
| Information Extraction | DocRED | Relation F1 | 40.38 | JEREX |