Wu Shan
2022
Data Synthesis and Iterative Refinement for Neural Semantic Parsing without Annotated Logical Forms
Wu Shan
|
Chen Bo
|
Han Xianpei
|
Sun Le
Proceedings of the 21st Chinese National Conference on Computational Linguistics
“Semantic parsing aims to convert natural language utterances to logical forms. A critical challenge for constructing semantic parsers is the lack of labeled data. In this paper, we propose a data synthesis and iterative refinement framework for neural semantic parsing, which can build semantic parsers without annotated logical forms. We first generate a naive corpus by sampling logic forms from knowledge bases and synthesizing their canonical utterances. Then, we further propose a bootstrapping algorithm to iteratively refine data and model, via a denoising language model and knowledge-constrained decoding. Experimental results show that our approach achieves competitive performance on GEO, ATIS and OVERNIGHT datasets in both unsupervised and semi-supervised data settings.”
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Co-authors
- Chen Bo 1
- Han Xianpei 1
- Sun Le 1
Venues
- ccl1