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arxiv: 1905.08704 · v2 · submitted 2019-05-21 · 💻 cs.CL

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AMR Parsing as Sequence-to-Graph Transduction

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classification 💻 cs.CL
keywords dataparsingsequence-to-graphtransductionaligner-freealignersamountsattention-based
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We propose an attention-based model that treats AMR parsing as sequence-to-graph transduction. Unlike most AMR parsers that rely on pre-trained aligners, external semantic resources, or data augmentation, our proposed parser is aligner-free, and it can be effectively trained with limited amounts of labeled AMR data. Our experimental results outperform all previously reported SMATCH scores, on both AMR 2.0 (76.3% F1 on LDC2017T10) and AMR 1.0 (70.2% F1 on LDC2014T12).

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