Natural Language to SQL Queries: A Review

Author:

Baig Mirza Shahzaib1,Imran Azhar1,Yasin Amanullah1,Butt Abdul Haleem1,Khan Muhammad Imran1

Affiliation:

1. Department of Creative Technologies, Faculty of Computing & AI, Air University, Islamabad

Abstract

The relational database is the way of maintaining, storing, and accessing structured data but in order to access the data in that database the queries need to be translated in the format of SQL queries. Using natural language rather than SQL has introduced the advancement of a new kind of handling strategy called Natural Language Interface to Database frameworks (NLIDB). NLIDB is a stage towards the turn of events of clever data set frameworks (IDBS) to upgrade the clients in performing adaptable questioning in data sets. A model that can deduce relational database queries from natural language. Advanced neural algorithms synthesize the end-to-end SQL to text relation which results in the accuracy of 80% on the publicly available datasets. In this paper, we reviewed the existing framework and compared them based on the aggregation classifier, select column pointer, and the clause pointer. Furthermore, we discussed the role of semantic parsing and neural algorithm’s contribution in predicting the aggregation, column pointer, and clause pointer. In particular, people with limited background knowledge are unable to access databases with ease. Using natural language interfaces for relational databases is the solution to make natural language to SQL queries. This paper presents a review of the existing framework to process natural language to SQL queries and we will also cover some of the speech to SQL model in discussion section, in order to understand their framework and to highlight the limitations in the existing models.

Publisher

50Sea

Subject

Computer Networks and Communications,Hardware and Architecture,Software

Reference50 articles.

1. Singh, G., & Solanki, A. (2016). An algorithm to transform natural language into sql queries for relational databases. Selforganizology, 3(3), 100-116. Sripad, Joshi, and Laxmaiah E. n.d. 2013. Survey of Natural Language Interface to Databases.

2. Kim, H., So, B. H., Han, W. S., & Lee, H. (2020). Natural language to SQL: Where are we today? Proceedings of the VLDB Endowment, 13(10), 1737-1750.

3. Vig, Jesse, and Kalai Ramea. “Comparison of transfer-learning approaches for response selection in multi-turn conversations.” Workshop on DSTC7. 2019.

4. Yu, Tao, et al. “Syntaxsqlnet: Syntax tree networks for the complex and cross-domain text-to-SQL task.” arXiv preprint arXiv:1810.05237 (2018).

5. Sun, Zeyu, et al. “A grammar-based structural CNN decoder for code generation.” Proceedings of the AAAI Conference on Artificial Intelligence. Vol. 33. 2019.

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