Exploring the flavor structure of quarks and leptons with reinforcement learning

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...

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Veröffentlicht in:arXiv.org 2024-01
Hauptverfasser: Nishimura, Satsuki, Miyao, Coh, Otsuka, Hajime
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description 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, and the normal ordering is well fitted with the current experimental data in contrast to the inverted ordering. A specific value of effective mass for the neutrinoless double beta decay and a sizable leptonic CP violation induced by an angular component of flavon field are predicted by autonomous behavior of the agent. Our finding results indicate that the reinforcement learning can be a new method for understanding the flavor structure.
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subjects Algorithms
Beta decay
Computer Science - Learning
CP violation
Flavor (particle physics)
Leptons
Machine learning
Neural networks
Physics - High Energy Physics - Phenomenology
Physics - High Energy Physics - Theory
Quarks
title Exploring the flavor structure of quarks and leptons with reinforcement learning
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