Exploiting Rich Syntactic Information for Semantic Parsing with Graph-to-Sequence Model
Xu, Kun, Wu, Lingfei, Wang, Zhiguo, Yu, Mo, Chen, Liwei, Sheinin, Vadim
–arXiv.org Artificial Intelligence
Existing neural semantic parsers mainly utilize a sequence encoder, i.e., a sequential LSTM, to extract word order features while neglecting other valuable syntactic information such as dependency graph or constituent trees. In this paper, we first propose to use the \textit{syntactic graph} to represent three types of syntactic information, i.e., word order, dependency and constituency features. We further employ a graph-to-sequence model to encode the syntactic graph and decode a logical form. Experimental results on benchmark datasets show that our model is comparable to the state-of-the-art on Jobs640, ATIS and Geo880. Experimental results on adversarial examples demonstrate the robustness of the model is also improved by encoding more syntactic information.
arXiv.org Artificial Intelligence
Aug-22-2018
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