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Autori principali: Liu, Tao, Mao, Xutao, Zan, Hongying, Zhang, Dixuan, Li, Yifan, Liu, Haixin, Kong, Lulu, Hou, Jiaming, Li, Rui, Li, YunLong, zheng, aoze, Zhang, Zhiqiang, Zhewei, Luo, Zhang, Kunli, Peng, Min
Natura: Preprint
Pubblicazione: 2025
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Accesso online:https://arxiv.org/abs/2505.18744
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author Liu, Tao
Mao, Xutao
Zan, Hongying
Zhang, Dixuan
Li, Yifan
Liu, Haixin
Kong, Lulu
Hou, Jiaming
Li, Rui
Li, YunLong
zheng, aoze
Zhang, Zhiqiang
Zhewei, Luo
Zhang, Kunli
Peng, Min
author_facet Liu, Tao
Mao, Xutao
Zan, Hongying
Zhang, Dixuan
Li, Yifan
Liu, Haixin
Kong, Lulu
Hou, Jiaming
Li, Rui
Li, YunLong
zheng, aoze
Zhang, Zhiqiang
Zhewei, Luo
Zhang, Kunli
Peng, Min
contents Text-to-SQL is a critical task in natural language processing that aims to transform natural language questions into accurate and executable SQL queries. In real-world scenarios, these reasoning tasks are often accompanied by complex mathematical computations, domain knowledge, and hypothetical reasoning scenarios. However, existing large-scale Text-to-SQL datasets typically focus on business logic and task logic, neglecting critical factors such as vertical domain knowledge, complex mathematical reasoning, and hypothetical reasoning, which are essential for realistically reflecting the reasoning demands in practical applications and completing data querying and analysis. To bridge this gap, we introduce LogicCat, the first Text-to-SQL benchmark dataset specifically designed for complex reasoning and chain-of-thought parsing, encompassing physics, arithmetic, commonsense, and hypothetical reasoning scenarios. LogicCat comprises 4,038 English questions paired 12,114 detailed chain-of-thought reasoning steps, spanning 45 databases across diverse domains, significantly surpassing existing datasets in complexity. Experimental results demonstrate that LogicCat substantially increases the task difficulty for current state-of-the-art models to at most 33.20% execution accuracy, indicating that this task remains exceptionally challenging. The advancement of LogicCat represents a crucial step toward developing systems suitable for real-world enterprise data analysis and autonomous query generation. We have released our dataset code at https://github.com/Ffunkytao/LogicCat.
format Preprint
id arxiv_https___arxiv_org_abs_2505_18744
institution arXiv
publishDate 2025
record_format arxiv
spellingShingle LogicCat: A Chain-of-Thought Text-to-SQL Benchmark for Complex Reasoning
Liu, Tao
Mao, Xutao
Zan, Hongying
Zhang, Dixuan
Li, Yifan
Liu, Haixin
Kong, Lulu
Hou, Jiaming
Li, Rui
Li, YunLong
zheng, aoze
Zhang, Zhiqiang
Zhewei, Luo
Zhang, Kunli
Peng, Min
Computation and Language
Text-to-SQL is a critical task in natural language processing that aims to transform natural language questions into accurate and executable SQL queries. In real-world scenarios, these reasoning tasks are often accompanied by complex mathematical computations, domain knowledge, and hypothetical reasoning scenarios. However, existing large-scale Text-to-SQL datasets typically focus on business logic and task logic, neglecting critical factors such as vertical domain knowledge, complex mathematical reasoning, and hypothetical reasoning, which are essential for realistically reflecting the reasoning demands in practical applications and completing data querying and analysis. To bridge this gap, we introduce LogicCat, the first Text-to-SQL benchmark dataset specifically designed for complex reasoning and chain-of-thought parsing, encompassing physics, arithmetic, commonsense, and hypothetical reasoning scenarios. LogicCat comprises 4,038 English questions paired 12,114 detailed chain-of-thought reasoning steps, spanning 45 databases across diverse domains, significantly surpassing existing datasets in complexity. Experimental results demonstrate that LogicCat substantially increases the task difficulty for current state-of-the-art models to at most 33.20% execution accuracy, indicating that this task remains exceptionally challenging. The advancement of LogicCat represents a crucial step toward developing systems suitable for real-world enterprise data analysis and autonomous query generation. We have released our dataset code at https://github.com/Ffunkytao/LogicCat.
title LogicCat: A Chain-of-Thought Text-to-SQL Benchmark for Complex Reasoning
topic Computation and Language
url https://arxiv.org/abs/2505.18744