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Byte-Pair Encoding for Text-to-SQL Generation

Adapted Byte-Pair Encoding and AST BPE improve text-to-SQL generation accuracy and reduce training time on various tasks.

Year
2019
Venue
arXiv 2019
Authors
2
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Abstract onlyARXIV-DEFAULT

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arxiv.org/abs/1910.08962v2ARXIV-DEFAULT
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Abstract

Neural sequence-to-sequence models provide a competitive approach to the task of mapping a question in natural language to an SQL query, also referred to as text-to-SQL generation. The Byte-Pair Encoding algorithm (BPE) has previously been used to improve machine translation (MT) between natural languages. In this work, we adapt BPE for text-to-SQL generation. As the datasets for this task are rather small compared to MT, we present a novel stopping criterion that prevents overfitting the BPE encoding to the training set. Additionally, we present AST BPE, which is a version of BPE that uses the Abstract Syntax Tree (AST) of the SQL statement to guide BPE merges and therefore produce BPE encodings that generalize better. We improved the accuracy of a strong attentive seq2seq baseline on five out of six English text-to-SQL tasks while reducing training time by more than 50% on four of them due to the shortened targets. Finally, on two of these tasks we exceeded previously reported accuracies.

Authors

2