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Exploring the Truth and Beauty of Theory Landscapes with Machine Learning

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arxiv 2401.11513 v1 pith:DONN5NSM submitted 2024-01-21 hep-ph cs.LG

Exploring the Truth and Beauty of Theory Landscapes with Machine Learning

classification hep-ph cs.LG
keywords beautycriterialearningmachinemodeltheoryabstractaccomplished
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Theoretical physicists describe nature by i) building a theory model and ii) determining the model parameters. The latter step involves the dual aspect of both fitting to the existing experimental data and satisfying abstract criteria like beauty, naturalness, etc. We use the Yukawa quark sector as a toy example to demonstrate how both of those tasks can be accomplished with machine learning techniques. We propose loss functions whose minimization results in true models that are also beautiful as measured by three different criteria - uniformity, sparsity, or symmetry.

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Cited by 3 Pith papers

Reviewed papers in the Pith corpus that reference this work. Sorted by Pith novelty score.

  1. Revisiting One-Zero and Two-Zero Neutrino Mass Textures in Light of Recent Oscillation and Cosmological Data

    hep-ph 2026-07 conditional novelty 5.0

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  2. Rolling Down the Leptonic BSM Landscape Using Machine Learning Techniques

    hep-ph 2026-06 unverdicted novelty 4.0

    Machine learning optimization is applied to find parameters yielding neutrino mass matrices with target textures in BSM leptonic models.

  3. Good flavor search in SU(5): a machine learning approach

    hep-ph 2025-11 unverdicted novelty 4.0

    Machine learning optimization of a generalized SU(5) parameter y finds y ≈ 0.8 produces the closest match to the original model while resolving the fermion mass discrepancy.