cs.AI updates on arXiv.org 10月06日
LLMSQL:WikiSQL的系统性修订与LLM时代基准
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本文提出LLMSQL,对WikiSQL进行系统性修订,解决早期NL2SQL研究中数据集的问题,并作为LLM时代的基准,为现代自然语言到SQL模型提供清洁文本。

arXiv:2510.02350v1 Announce Type: cross Abstract: Converting natural language questions into SQL queries (Text-to-SQL) enables non-expert users to interact with relational databases and has long been a central task for natural language interfaces to data. While the WikiSQL dataset played a key role in early NL2SQL research, its usage has declined due to structural and annotation issues, including case sensitivity inconsistencies, data type mismatches, syntax errors, and unanswered questions. We present LLMSQL, a systematic revision and transformation of WikiSQL designed for the LLM era. We classify these errors and implement automated methods for cleaning and re-annotation. To assess the impact of these improvements, we evaluated multiple large language models (LLMs), including Gemma 3, LLaMA 3.2, Mistral 7B, gpt-oss 20B, Phi-3.5 Mini, Qwen 2.5, OpenAI o4-mini, DeepSeek R1 and others. Rather than serving as an update, LLMSQL is introduced as an LLM-ready benchmark: unlike the original WikiSQL, tailored for pointer-network models selecting tokens from input, LLMSQL provides clean natural language questions and full SQL queries as plain text, enabling straightforward generation and evaluation for modern natural language-to-SQL models.

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LLMSQL WikiSQL NL2SQL LLM 数据集修订
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