Advancing Tools for Simulation-Based Inference
High Energy Physics - Phenomenology
2025-10-01 v3 High Energy Physics - Experiment
Abstract
We study the benefit of modern simulation-based inference to constrain particle interactions at the LHC. We explore ways to incorporate known physics structures into likelihood estimation, specifically morphing-aware estimation and derivative learning. Technically, we introduce a new and more efficient smearing algorithm, illustrate how uncertainties can be approximated through repulsive ensembles, and show how equivariant networks can improve likelihood estimation. After illustrating these aspects for a toy model, we target di-boson production at the LHC and find that our improvements significantly increase numerical control and stability.
Keywords
Cite
@article{arxiv.2410.07315,
title = {Advancing Tools for Simulation-Based Inference},
author = {Henning Bahl and Victor Bresó and Giovanni De Crescenzo and Tilman Plehn},
journal= {arXiv preprint arXiv:2410.07315},
year = {2025}
}
Comments
26 pages, 13 figures; v2: extended results section, v3: version accepted for publication