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Learning to Generate Structured Queries from Natural Language with Indirect Supervision

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arxiv 1809.03195 v1 pith:FIBAQRK3 submitted 2018-09-10 cs.CL

Learning to Generate Structured Queries from Natural Language with Indirect Supervision

classification cs.CL
keywords languagelearningmodelnaturalparadigmdomainsindirectqueries
verification ladder T0 review T1 audit T2 compute T3 formal T4 reserved
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Generating structured query language (SQL) from natural language is an emerging research topic. This paper presents a new learning paradigm from indirect supervision of the answers to natural language questions, instead of SQL queries. This paradigm facilitates the acquisition of training data due to the abundant resources of question-answer pairs for various domains in the Internet, and expels the difficult SQL annotation job. An end-to-end neural model integrating with reinforcement learning is proposed to learn SQL generation policy within the answer-driven learning paradigm. The model is evaluated on datasets of different domains, including movie and academic publication. Experimental results show that our model outperforms the baseline models.

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