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Exploring the Compositional Generalization in Context Dependent Text-to-SQL Parsing

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arxiv 2306.04480 v1 pith:PQODDXFQ submitted 2023-05-29 cs.CL

Exploring the Compositional Generalization in Context Dependent Text-to-SQL Parsing

classification cs.CL
keywords compositionalgeneralizationstatementsmodelstext-to-sqlinputmodificationpatterns
verification ladder T0 review T1 audit T2 compute T3 formal T4 reserved
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In the context-dependent Text-to-SQL task, the generated SQL statements are refined iteratively based on the user input utterance from each interaction. The input text from each interaction can be viewed as component modifications to the previous SQL statements, which could be further extracted as the modification patterns. Since these modification patterns could also be combined with other SQL statements, the models are supposed to have the compositional generalization to these novel combinations. This work is the first exploration of compositional generalization in context-dependent Text-to-SQL scenarios. To facilitate related studies, we constructed two challenging benchmarks named \textsc{CoSQL-CG} and \textsc{SParC-CG} by recombining the modification patterns and existing SQL statements. The following experiments show that all current models struggle on our proposed benchmarks. Furthermore, we found that better aligning the previous SQL statements with the input utterance could give models better compositional generalization ability. Based on these observations, we propose a method named \texttt{p-align} to improve the compositional generalization of Text-to-SQL models. Further experiments validate the effectiveness of our method. Source code and data are available.

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