CSQ: A Chinese Elementary Science Question Dataset with Rich Discipline Properties in Adaptive Problem-Solving Process Generation

<p dir="ltr">Although large language models (LLMs) demonstrate significant potential for advancing personalized science education, they face challenges in generating science problem-solving processes adapted to students' grade levels. In this paper, we developed the world's...

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Main Author: Zhi Liu (21672224) (author)
Other Authors: Dong Li (20936957) (author), Taotao Long (21672242) (author), Chaodong Wen (21672260) (author), Xian Peng (21672269) (author), Jiaxin Guo (21672273) (author)
Published: 2025
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Summary:<p dir="ltr">Although large language models (LLMs) demonstrate significant potential for advancing personalized science education, they face challenges in generating science problem-solving processes adapted to students' grade levels. In this paper, we developed the world's largest<b> Chinese Science Question (CSQ)</b> dataset, which comprises both a benchmark and a training set, aiming to evaluate and enhance the science problem-solving capabilities of LLMs. The CSQ consists of 12,000 high-quality samples featuring a variety of question types and diverse discipline properties, covering four subjects and multiple topics at the Chinese primary school. We further designed the language model to reflect these discipline properties in the generated responses, emulating the thought process of students when solving science questions. We demonstrated that CSQ and its extensive annotations can be employed for fine-tuning models. This was confirmed through both automatic and human evaluations, particularly in <b>generating problem-solving processes that are aligned with students' grade levels</b>.</p><p>@article{DongLli2025CSQ,</p> <p>title={CSQ: A Chinese Elementary Science Question Dataset with Rich Discipline Properties in adaptive problem-solving process generation},</p> <p>author={Zhi liu, Dong Li, Tatao Long, Chaodong Wen, Xian Peng, Jiaxin Guo},</p> <p>journal={Scientific Data},</p> <p>year={2025},</p> <p>url={}</p> <p>}</p>