物理
精炼(冶金)
费曼图
还原(数学)
费曼图
费曼积分
理论物理学
粒子物理学
数学物理
数学
几何学
化学
物理化学
作者
Matt von Hippel,Matthias Wilhelm
标识
DOI:10.1007/jhep05(2025)185
摘要
A bstract Integration-by-parts reductions of Feynman integrals pose a frequent bottleneck in state-of-the-art calculations in theoretical particle and gravitational-wave physics, and rely on heuristic approaches for selecting integration-by-parts identities, whose quality heavily influences the performance. In this paper, we investigate the use of machine-learning techniques to find improved heuristics. We use funsearch, a genetic programming variant based on code generation by a Large Language Model, in order to explore possible approaches, then use strongly typed genetic programming to zero in on useful solutions. Both approaches manage to re-discover the state-of-the-art heuristics recently incorporated into integration-by-parts solvers, and in one example find a small advance on this state of the art.
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