THE PHYSICS OF ELEMENTARY PARTICLES AND FIELDS |
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Approach the Gell-Mann–Okubo Formula with Machine Learning |
Zhenyu Zhang1,2, Rui Ma1,2, Jifeng Hu1,2*, and Qian Wang1,2* |
1Guangdong Provincial Key Laboratory of Nuclear Science, Institute of Quantum Matter, South China Normal University, Guangzhou 510006, China 2Guangdong-Hong Kong Joint Laboratory of Quantum Matter, Southern Nuclear Science Computing Center, South China Normal University, Guangzhou 510006, China
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Cite this article: |
Zhenyu Zhang, Rui Ma, Jifeng Hu et al 2022 Chin. Phys. Lett. 39 111201 |
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Abstract Machine learning is a novel and powerful technology and has been widely used in various science topics. We demonstrate a machine-learning-based approach built by a set of general metrics and rules inspired by physics. Taking advantages of physical constraints, such as dimension identity, symmetry and generalization, we succeed to approach the Gell-Mann–Okubo formula using a technique of symbolic regression. This approach can effectively find explicit solutions among user-defined observables, and can be extensively applied to studying exotic hadron spectrum.
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Received: 28 August 2022
Published: 14 October 2022
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PACS: |
12.40.Yx
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(Hadron mass models and calculations)
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12.39.-x
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(Phenomenological quark models)
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11.30.-j
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(Symmetry and conservation laws)
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