Recent Advances in SQL Query Generation: A Survey

Natural language is hypothetically the best user interface for many domains. However, general models that provide an interface between natural language and any other domain still do not exist. Providing natural language interface to relational databases could possibly attract a vast majority of user...

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Veröffentlicht in:arXiv.org 2020-05
Hauptverfasser: Kalajdjieski, Jovan, Toshevska, Martina, Stojanovska, Frosina
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description Natural language is hypothetically the best user interface for many domains. However, general models that provide an interface between natural language and any other domain still do not exist. Providing natural language interface to relational databases could possibly attract a vast majority of users that are or are not proficient with query languages. With the rise of deep learning techniques, there is extensive ongoing research in designing a suitable natural language interface to relational databases. This survey aims to overview some of the latest methods and models proposed in the area of SQL query generation from natural language. We describe models with various architectures such as convolutional neural networks, recurrent neural networks, pointer networks, reinforcement learning, etc. Several datasets intended to address the problem of SQL query generation are interpreted and briefly overviewed. In the end, evaluation metrics utilized in the field are presented mainly as a combination of execution accuracy and logical form accuracy.
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subjects Artificial neural networks
Domains
Form accuracy
Language
Machine learning
Natural language
Natural language (computers)
Neural networks
Queries
Query languages
Recurrent neural networks
Relational data bases
Speech recognition
title Recent Advances in SQL Query Generation: A Survey
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