Deep Joint Entity Disambiguation with Local Neural Attention
About
We propose a novel deep learning model for joint document-level entity disambiguation, which leverages learned neural representations. Key components are entity embeddings, a neural attention mechanism over local context windows, and a differentiable joint inference stage for disambiguation. Our approach thereby combines benefits of deep learning with more traditional approaches such as graphical models and probabilistic mention-entity maps. Extensive experiments show that we are able to obtain competitive or state-of-the-art accuracy at moderate computational costs.
Octavian-Eugen Ganea, Thomas Hofmann• 2017
Related benchmarks
| Task | Dataset | Result | Rank | |
|---|---|---|---|---|
| Entity Linking | MSNBC | Micro F193.7 | 36 | |
| Entity Disambiguation | AIDA CoNLL (test) | In-KB Accuracy92.22 | 36 | |
| Entity Linking | ACE2004 (test) | Micro F1 Score88.5 | 27 | |
| Entity Linking | AQUAINT (test) | Micro F1 Score88.5 | 27 | |
| Entity Linking | Wiki (test) | Micro F177.5 | 27 | |
| Entity Linking | CWEB (test) | Micro F177.9 | 26 | |
| Named Entity Disambiguation | AIDA (test) | Micro InKB F192.2 | 25 | |
| Entity Disambiguation | Wiki (test) | Micro F177.5 | 24 | |
| Entity Disambiguation | AIDA-CoNLL B (test) | In-KB Accuracy92.22 | 21 | |
| Entity Disambiguation | AQUAINT (AQ) (test) | Micro F188.5 | 20 |
Showing 10 of 28 rows