Design Challenges and Misconceptions in Neural Sequence Labeling
About
We investigate the design challenges of constructing effective and efficient neural sequence labeling systems, by reproducing twelve neural sequence labeling models, which include most of the state-of-the-art structures, and conduct a systematic model comparison on three benchmarks (i.e. NER, Chunking, and POS tagging). Misconceptions and inconsistent conclusions in existing literature are examined and clarified under statistical experiments. In the comparison and analysis process, we reach several practical conclusions which can be useful to practitioners.
Jie Yang, Shuailong Liang, Yue Zhang• 2018
Related benchmarks
| Task | Dataset | Result | Rank | |
|---|---|---|---|---|
| Named Entity Recognition | CoNLL 2003 (test) | F1 Score90.77 | 539 | |
| Named Entity Recognition | OntoNotes 5.0 (test) | F1 Score83.76 | 90 | |
| CCG Supertagging | CCGBank (test) | Accuracy94.1 | 35 | |
| Part-of-Speech Tagging | Wall Street Journal (WSJ) section 23 (test) | Accuracy97.51 | 12 | |
| POS Tagging | WSJ (Section 23) | Mean Accuracy97.48 | 4 | |
| Part-of-Speech Tagging | UD v2.2 (test) | POS Accuracy (cs)98.48 | 3 |
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