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Hauptverfasser: Bendavid, Josh, Conde, Daniel, Morales-Alvarado, Manuel, Sanz, Veronica, Ubiali, Maria
Format: Preprint
Veröffentlicht: 2025
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Online-Zugang:https://arxiv.org/abs/2508.00989
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author Bendavid, Josh
Conde, Daniel
Morales-Alvarado, Manuel
Sanz, Veronica
Ubiali, Maria
author_facet Bendavid, Josh
Conde, Daniel
Morales-Alvarado, Manuel
Sanz, Veronica
Ubiali, Maria
contents We explore the use of symbolic regression to derive compact analytical expressions for angular observables relevant to electroweak boson production at the Large Hadron Collider (LHC). Focusing on the angular coefficients that govern the decay distributions of $W$ and $Z$ bosons, we investigate whether symbolic models can well approximate these quantities, typically computed via computationally costly numerical procedures, with high fidelity and interpretability. Using the PySR package, we first validate the approach in controlled settings, namely in angular distributions in lepton-lepton collisions in QED and in leading-order Drell-Yan production at the LHC. We then apply symbolic regression to extract closed-form expressions for the angular coefficients $A_i$ as functions of transverse momentum, rapidity, and invariant mass, using next-to-leading order simulations of $pp \to \ell^+\ell^-$ events. Our results demonstrate that symbolic regression can produce accurate and generalisable expressions that match Monte Carlo predictions within uncertainties, while preserving interpretability and providing insight into the kinematic dependence of angular observables.
format Preprint
id arxiv_https___arxiv_org_abs_2508_00989
institution arXiv
publishDate 2025
record_format arxiv
spellingShingle Angular Coefficients from Interpretable Machine Learning with Symbolic Regression
Bendavid, Josh
Conde, Daniel
Morales-Alvarado, Manuel
Sanz, Veronica
Ubiali, Maria
High Energy Physics - Phenomenology
We explore the use of symbolic regression to derive compact analytical expressions for angular observables relevant to electroweak boson production at the Large Hadron Collider (LHC). Focusing on the angular coefficients that govern the decay distributions of $W$ and $Z$ bosons, we investigate whether symbolic models can well approximate these quantities, typically computed via computationally costly numerical procedures, with high fidelity and interpretability. Using the PySR package, we first validate the approach in controlled settings, namely in angular distributions in lepton-lepton collisions in QED and in leading-order Drell-Yan production at the LHC. We then apply symbolic regression to extract closed-form expressions for the angular coefficients $A_i$ as functions of transverse momentum, rapidity, and invariant mass, using next-to-leading order simulations of $pp \to \ell^+\ell^-$ events. Our results demonstrate that symbolic regression can produce accurate and generalisable expressions that match Monte Carlo predictions within uncertainties, while preserving interpretability and providing insight into the kinematic dependence of angular observables.
title Angular Coefficients from Interpretable Machine Learning with Symbolic Regression
topic High Energy Physics - Phenomenology
url https://arxiv.org/abs/2508.00989