Jan. 31, 2024, 3:47 p.m. | Satsuki Nishimura Coh Miyao Hajime Otsuka

cs.LG updates on arXiv.org arxiv.org

We propose a method to explore the flavor structure of quarks and leptons with reinforcement learning. As a concrete model, we utilize a basic value-based algorithm for models with $U(1)$ flavor symmetry. By training neural networks on the $U(1)$ charges of quarks and leptons, the agent finds 21 models to be consistent with experimentally measured masses and mixing angles of quarks and leptons. In particular, an intrinsic value of normal ordering tends to be larger than that of inverted ordering, …

agent algorithm basic concrete cs.lg explore hep-ph hep-th networks neural networks reinforcement reinforcement learning symmetry training value

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