Litcius/Paper detail

Know What I don’t Know: Handling Ambiguous and Unknown Questions for Text-to-SQL

Bing Wang, Yan Gao, Zhoujun Li, Jian–Guang Lou

202314 citationsDOIOpen Access PDF

Abstract

The task of text-to-SQL aims to convert a natural language question into its corresponding SQL query within the context of relational tables. Existing text-to-SQL parsers generate a plausible SQL query for an arbitrary user question, thereby failing to correctly handle problematic user questions. To formalize this problem, we conduct a preliminary study on the observed ambiguous and unanswerable cases in text-to-SQL and summarize them into 6 feature categories. Correspondingly, we identify the causes behind each category and propose requirements for handling ambiguous and unanswerable questions. Following this study, we propose a simple yet effective counterfactual example generation approach that automatically produces ambiguous and unanswerable text-to-SQL examples. Furthermore, we propose a weakly supervised DTE (Detecting-Then-Explaining) model for error detection, localization, and explanation. Experimental results show that our model achieves the best result on both real-world examples and generated examples compared with various baselines. We release our data and code at: https://github.com/wbbeyourself/DTE.

Topics & Concepts

SQLComputer scienceQuery by ExampleContext (archaeology)Simple (philosophy)Data definition languageNull (SQL)Natural languageCode (set theory)Stored procedureFeature (linguistics)Information retrievalProgramming languageArtificial intelligenceDatabaseLinguisticsWeb search querySearch engineSet (abstract data type)EpistemologyPaleontologyPhilosophyBiologyTopic ModelingSemantic Web and OntologiesNatural Language Processing Techniques