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Addressing the Data Sparsity Issue in Neural AMR Parsing

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arxiv 1702.05053 v1 pith:Y76ZYCZL submitted 2017-02-16 cs.CL

Addressing the Data Sparsity Issue in Neural AMR Parsing

classification cs.CL
keywords dataneuralparsingsparsitydifferentissuemodelachieve
verification ladder T0 review T1 audit T2 compute T3 formal T4 reserved
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Neural attention models have achieved great success in different NLP tasks. How- ever, they have not fulfilled their promise on the AMR parsing task due to the data sparsity issue. In this paper, we de- scribe a sequence-to-sequence model for AMR parsing and present different ways to tackle the data sparsity problem. We show that our methods achieve significant improvement over a baseline neural atten- tion model and our results are also compet- itive against state-of-the-art systems that do not use extra linguistic resources.

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