An AMR Aligner Tuned by Transition-based Parser
About
In this paper, we propose a new rich resource enhanced AMR aligner which produces multiple alignments and a new transition system for AMR parsing along with its oracle parser. Our aligner is further tuned by our oracle parser via picking the alignment that leads to the highest-scored achievable AMR graph. Experimental results show that our aligner outperforms the rule-based aligner in previous work by achieving higher alignment F1 score and consistently improving two open-sourced AMR parsers. Based on our aligner and transition system, we develop a transition-based AMR parser that parses a sentence into its AMR graph directly. An ensemble of our parsers with only words and POS tags as input leads to 68.4 Smatch F1 score.
Yijia Liu, Wanxiang Che, Bo Zheng, Bing Qin, Ting Liu• 2018
Related benchmarks
| Task | Dataset | Result | Rank | |
|---|---|---|---|---|
| AMR parsing | LDC2014T12 (Full) | F1 Score68.4 | 32 | |
| AMR parsing | LDC2014T12 Newswire section | F1 Score73.3 | 27 | |
| Subgraph Alignment | LEAMR 1.0 (test) | Exact Alignment Precision85.68 | 13 | |
| Inter-lingual Subgraph Identification | ISI English | Precision92.1 | 5 | |
| Inter-lingual Subgraph Identification | ISI German | Precision73.7 | 4 | |
| Inter-lingual Subgraph Identification | ISI Spanish (ES) | Precision84 | 4 | |
| Inter-lingual Subgraph Identification | ISI Italian (IT) | Precision64.3 | 4 |
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