Pierre Ramond

2papers

2 Papers

HEP-PHOct 31, 2023
Seeking Truth and Beauty in Flavor Physics with Machine Learning

Konstantin T. Matchev, Katia Matcheva, Pierre Ramond et al.

The discovery process of building new theoretical physics models involves the dual aspect of both fitting to the existing experimental data and satisfying abstract theorists' criteria like beauty, naturalness, etc. We design loss functions for performing both of those tasks with machine learning techniques. We use the Yukawa quark sector as a toy example to demonstrate that the optimization of these loss functions results in true and beautiful models.

HEP-PHJan 21, 2024
Exploring the Truth and Beauty of Theory Landscapes with Machine Learning

Konstantin T. Matchev, Katia Matcheva, Pierre Ramond et al.

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.