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Sequence-to-Action: End-to-End Semantic Graph Generation for Semantic Parsing

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This paper proposes a neural semantic parsing approach -- Sequence-to-Action, which models semantic parsing as an end-to-end semantic graph generation process. Our method simultaneously leverages the advantages from two recent promising directions of semantic parsing. Firstly, our model uses a semantic graph to represent the meaning of a sentence, which has a tight-coupling with knowledge bases. Secondly, by leveraging the powerful representation learning and prediction ability of neural network models, we propose a RNN model which can effectively map sentences to action sequences for semantic graph generation. Experiments show that our method achieves state-of-the-art performance on OVERNIGHT dataset and gets competitive performance on GEO and ATIS datasets.

Bo Chen, Le Sun, Xianpei Han• 2018

Related benchmarks

TaskDatasetResultRank
Semantic ParsingOVERNIGHT v1.0 (test)
Blocks Domain Score61.4
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