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arXiv 提交日期: 2026-02-12
📄 Abstract - Think like a Scientist: Physics-guided LLM Agent for Equation Discovery

Explaining observed phenomena through symbolic, interpretable formulas is a fundamental goal of science. Recently, large language models (LLMs) have emerged as promising tools for symbolic equation discovery, owing to their broad domain knowledge and strong reasoning capabilities. However, most existing LLM-based systems try to guess equations directly from data, without modeling the multi-step reasoning process that scientists often follow: first inferring physical properties such as symmetries, then using these as priors to restrict the space of candidate equations. We introduce KeplerAgent, an agentic framework that explicitly follows this scientific reasoning process. The agent coordinates physics-based tools to extract intermediate structure and uses these results to configure symbolic regression engines such as PySINDy and PySR, including their function libraries and structural constraints. Across a suite of physical equation benchmarks, KeplerAgent achieves substantially higher symbolic accuracy and greater robustness to noisy data than both LLM and traditional baselines.

顶级标签: llm agents natural language processing
详细标签: symbolic regression physics-guided ai equation discovery scientific reasoning multi-step reasoning 或 搜索:

像科学家一样思考:用于方程发现的物理引导型大语言模型智能体 / Think like a Scientist: Physics-guided LLM Agent for Equation Discovery


1️⃣ 一句话总结

这篇论文提出了一个名为KeplerAgent的智能框架,它模仿科学家的推理过程,先利用物理知识推断出对称性等中间属性,再指导符号回归工具寻找方程,从而在多种物理方程发现任务中,比直接猜测或传统方法更准确、更抗数据噪声。

源自 arXiv: 2602.12259