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arxiv: 2403.16819 · v2 · submitted 2024-03-25 · ⚛️ nucl-th · physics.comp-ph· quant-ph

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A neural network approach for two-body systems with spin and isospin degrees of freedom

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classification ⚛️ nucl-th physics.comp-phquant-ph
keywords methoddegreesfreedomisospinlearningmachinenaitonetwork
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We propose an enhanced machine learning method to calculate the ground state of two-body systems. By extending the original method [Naito, Naito, and Hashimoto, Phys. Rev. Research 5, 033189 (2023)], the present method enables consideration of the spin and isospin degrees of freedom by employing a non-fully connected deep neural network and the unsupervised machine learning technique. The validity of this method is verified by calculating the unique bound state of the deuteron.

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