CLFeb 12, 2023

RESDSQL: Decoupling Schema Linking and Skeleton Parsing for Text-to-SQL

arXiv:2302.05965v3358 citationsh-index: 27Has Code
AI Analysis

This addresses the problem of generating accurate SQL queries from natural language for database users, with incremental improvements over existing methods.

The paper tackles the challenge of parsing complex SQL queries in text-to-SQL tasks by decoupling schema linking and skeleton parsing, resulting in improved performance and robustness on the Spider dataset and its variants.

One of the recent best attempts at Text-to-SQL is the pre-trained language model. Due to the structural property of the SQL queries, the seq2seq model takes the responsibility of parsing both the schema items (i.e., tables and columns) and the skeleton (i.e., SQL keywords). Such coupled targets increase the difficulty of parsing the correct SQL queries especially when they involve many schema items and logic operators. This paper proposes a ranking-enhanced encoding and skeleton-aware decoding framework to decouple the schema linking and the skeleton parsing. Specifically, for a seq2seq encoder-decode model, its encoder is injected by the most relevant schema items instead of the whole unordered ones, which could alleviate the schema linking effort during SQL parsing, and its decoder first generates the skeleton and then the actual SQL query, which could implicitly constrain the SQL parsing. We evaluate our proposed framework on Spider and its three robustness variants: Spider-DK, Spider-Syn, and Spider-Realistic. The experimental results show that our framework delivers promising performance and robustness. Our code is available at https://github.com/RUCKBReasoning/RESDSQL.

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