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Zuchao Li; Shexia He; Hai Zhao; Yiqing Zhang; Zhuosheng Zhang; Xi Zhou; Xiang Zhou

Abstract
Semantic role labeling (SRL) aims to discover the predicateargument structure of a sentence. End-to-end SRL without syntactic input has received great attention. However, most of them focus on either span-based or dependency-based semantic representation form and only show specific model optimization respectively. Meanwhile, handling these two SRL tasks uniformly was less successful. This paper presents an end-to-end model for both dependency and span SRL with a unified argument representation to deal with two different types of argument annotations in a uniform fashion. Furthermore, we jointly predict all predicates and arguments, especially including long-term ignored predicate identification subtask. Our single model achieves new state-of-the-art results on both span (CoNLL 2005, 2012) and dependency (CoNLL 2008, 2009) SRL benchmarks.
Code Repositories
Benchmarks
| Benchmark | Methodology | Metrics |
|---|---|---|
| semantic-role-labeling-on-conll-2005 | Li et al. (2019) + ELMo | F1: 86.3 |
| semantic-role-labeling-on-conll-2005 | Li et al. (2019) | F1: 83.0 |
| semantic-role-labeling-on-conll-2005 | Li et al. (2019) (Ensemble) | F1: 87.7 |
| semantic-role-labeling-on-ontonotes | Li et al. | F1: 86.0 |
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