Large-scale semantic parsing datasets annotated with logical forms have enabled major advances in supervised approaches. But can richer supervision help even more? To explore the utility of fine-grained, lexical-level supervision, we introduce Squall, a dataset that enriches 11,276 WikiTableQuestions English-language questions with manually created SQL equivalents plus alignments between SQL and question fragments. Our annotation enables new training possibilities for encoder-decoder models, including approaches from machine translation previously precluded by the absence of alignments. We propose and test two methods: (1) supervised attention; (2) adopting an auxiliary objective of disambiguating references in the input queries to table columns. In 5-fold cross validation, these strategies improve over strong baselines by 4.4% execution accuracy. Oracle experiments suggest that annotated alignments can support further accuracy gains of up to 23.9%.
On the Potential of Lexico-logical Alignments for Semantic Parsing to SQL Queries
Squall, a dataset with SQL equivalents and alignments for WikiTableQuestions, enhances encoder-decoder models with supervised attention and reference disambiguation, improving execution accuracy.
- Year
- 2020
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- arXiv 2020
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- 5
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- arxiv.org/abs/2010.11246ARXIV-DEFAULT
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