An AMR Aligner Tuned by Transition-based Parser

EMNLP 2018  ·  Yijia Liu, Wanxiang Che, Bo Zheng, Bing Qin, Ting Liu ·

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.

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Results from the Paper


Task Dataset Model Metric Name Metric Value Global Rank Result Benchmark
AMR Parsing LDC2014T12 Transition-based+improved aligner+ensemble F1 Full 68.4 # 6
F1 Newswire 73.3 # 1
AMR Parsing LDC2014T12: Transition-based+improved aligner+ensemble F1 Newswire 0.73 # 2
F1 Full 0.68 # 2

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