Hierarchical Entity Typing via Multi-level Learning to Rank
About
We propose a novel method for hierarchical entity classification that embraces ontological structure at both training and during prediction. At training, our novel multi-level learning-to-rank loss compares positive types against negative siblings according to the type tree. During prediction, we define a coarse-to-fine decoder that restricts viable candidates at each level of the ontology based on already predicted parent type(s). We achieve state-of-the-art across multiple datasets, particularly with respect to strict accuracy.
Tongfei Chen, Yunmo Chen, Benjamin Van Durme• 2020
Related benchmarks
| Task | Dataset | Result | Rank | |
|---|---|---|---|---|
| Entity Typing | OntoNotes (test) | Ma-F182.9 | 37 | |
| Fine-Grained Entity Typing | OntoNotes (test) | Macro F1 Score73 | 27 | |
| Fine-Grained Entity Typing | FIGER (test) | Macro F183 | 22 | |
| Entity Typing | BBN (test) | Macro F179.7 | 6 |
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