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Text-to-SQL Error Correction with Language Models of Code

Authors :
Chen, Ziru
Chen, Shijie
White, Michael
Mooney, Raymond
Payani, Ali
Srinivasa, Jayanth
Su, Yu
Sun, Huan
Publication Year :
2023

Abstract

Despite recent progress in text-to-SQL parsing, current semantic parsers are still not accurate enough for practical use. In this paper, we investigate how to build automatic text-to-SQL error correction models. Noticing that token-level edits are out of context and sometimes ambiguous, we propose building clause-level edit models instead. Besides, while most language models of code are not specifically pre-trained for SQL, they know common data structures and their operations in programming languages such as Python. Thus, we propose a novel representation for SQL queries and their edits that adheres more closely to the pre-training corpora of language models of code. Our error correction model improves the exact set match accuracy of different parsers by 2.4-6.5 and obtains up to 4.3 point absolute improvement over two strong baselines. Our code and data are available at https://github.com/OSU-NLP-Group/Auto-SQL-Correction.<br />Comment: ACL 2023 Short Paper

Details

Database :
arXiv
Publication Type :
Report
Accession number :
edsarx.2305.13073
Document Type :
Working Paper