LLM Reasoning 相关度: 7/10

Bethe Ansatz with a Large Language Model

Balázs Pozsgay, István Vona
arXiv: 2603.29932v1 发布: 2026-03-31 更新: 2026-03-31

AI 摘要

该论文探索了大型语言模型在数学物理计算中的能力,成功求解了多个自旋链模型的Bethe Ansatz解。

主要贡献

  • 验证LLM在解决复杂数学物理问题上的能力
  • 发现了新的且未发表的自旋链模型的Bethe Ansatz解
  • 发现了一种特殊的嵌套Bethe Ansatz结构

方法论

使用ChatGPT解决选定的可积自旋链模型的坐标Bethe Ansatz解,结果通过精确对角化和作者推导验证。

原文摘要

We explore the capability of a Large Language Model (LLM) to perform specific computations in mathematical physics: the task is to compute the coordinate Bethe Ansatz solution of selected integrable spin chain models. We select three integrable Hamiltonians for which the solutions were unpublished; two of the Hamiltonians are actually new. We observed that the LLM semi-autonomously solved the task in all cases, with a few mistakes along the way. These were corrected after the human researchers spotted them. The results of the LLM were checked against exact diagonalization (performed by separate programs), and the derivations were also checked by the authors. The Bethe Ansatz solutions are interesting in themselves. Our second model manifestly breaks left-right invariance, but it is PT-symmetric, therefore its solution could be interesting for applications in Generalized Hydrodynamics. And our third model is solved by a special form of the nested Bethe Ansatz, where the model is interacting, but the nesting level has a free fermionic structure lacking $U(1)$-invariance. This structure appears to be unique and it was found by the LLM. We used ChatGPT 5.2 Pro and 5.4 Pro by OpenAI.

标签

Large Language Models Mathematical Physics Bethe Ansatz Spin Chains

arXiv 分类

cond-mat.stat-mech cs.AI hep-th