$\mathcal{CP}$-analyses with symbolic regression
Henning Bahl, Elina Fuchs, Marco Menen, Tilman Plehn
SciPost Phys. 20, 040 (2026) · published 11 February 2026
- doi: 10.21468/SciPostPhys.20.2.040
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Abstract
Searching for $\mathcal{CP}$ violation in Higgs interactions at the LHC is as challenging as it is important. Although modern machine learning outperforms traditional methods, its results are difficult to control and interpret, which is especially important if an unambiguous probe of a fundamental symmetry is required. We propose solving this problem by learning analytic formulas with symbolic regression. Using the complementary PySR and SymbolNet approaches, we learn $\mathcal{CP}$-sensitive observables at the detector level for WBF Higgs production and top-associated Higgs production. We find that they offer advantages in interpretability and performance.
Authors / Affiliations: mappings to Contributors and Organizations
See all Organizations.- 1 Henning Bahl,
- 2 3 4 Elina Fuchs,
- 3 4 Marco Menen,
- 1 Tilman Plehn
- 1 Ruprecht-Karls-Universität Heidelberg / Heidelberg University
- 2 Deutsches Elektronen-Synchrotron / Deutsche Elektronen-Synchrotron DESY [DESY]
- 3 Leibniz Universität Hannover / University of Hannover
- 4 Physikalisch-Technische Bundesanstalt / German National Metrology Institute [PTB]
