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AMR Parsing as Sequence-to-Graph Transduction

机译:AMR解析为序列到图形转导

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摘要

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 outperfonn all previously reported Smatch scores, on both AMR 2.0 (76.3% Fl on LDC2017T10) and AMR 1.0 (70.2% Fl on LDC2014T12).
机译:我们提出了一种基于关注的模型,将AMR解析为序列到曲线图转导。与依赖于预先训练的对齐器,外部语义资源或数据增强的大多数AMR解析器不同,我们提出的解析器是无对齐的,它可以有效地培训,有限的标记为AMR数据。我们的实验结果突出了所有先前报道的Spatch得分,在AMR 2.0(LDC2017T10上76.3%)和AMR 1.0(LDC2014T12上的70.2%FL)上。

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