Concepedia

Publication | Open Access

ACT-SQL: In-Context Learning for Text-to-SQL with Automatically-Generated Chain-of-Thought

26

Citations

22

References

2023

Year

Abstract

Recently Large Language Models (LLMs) have been proven to have strong abilities in various domains and tasks. We study the problem of prompt designing in the text-to-SQL task and attempt to improve the LLMs’ reasoning ability when generating SQL queries. Besides the trivial few-shot in-context learning setting, we design our chain-of-thought (CoT) prompt with a similar method to schema linking. We provide a method named ACT-SQL to automatically generate auto-CoT exemplars and thus the whole process doesn’t need manual labeling. Our approach is cost-saving since we only use the LLMs’ API call once when generating one SQL query. Furthermore, we extend our in-context learning method to the multi-turn text-to-SQL task. The experiment results show that the LLMs’ performance can benefit from our ACT-SQL approach. Our approach achieves SOTA performance on the Spider dev set among existing in-context learning approaches.

References

YearCitations

2023

14.1K

2022

4.2K

2022

4.2K

2021

1.4K

2022

1.1K

2022

1K

2017

784

2018

734

2017

303

2019

193

Page 1