eprintid: 36898 rev_number: 11 eprint_status: archive userid: 9154 dir: disk0/00/03/68/98 datestamp: 2025-07-21 09:25:14 lastmod: 2025-07-21 09:25:46 status_changed: 2025-07-21 09:25:14 type: doctoralThesis metadata_visibility: show creators_name: Elmer, Nina Marie title: Bridging Theory and Data Uncertainty-Aware Analyses for the LHC and Beyond subjects: ddc-530 divisions: i-130300 adv_faculty: af-13 abstract: Uncertainties are crucial in particle physics, affecting experimental data and theoretical predictions. This thesis investigates the impact of uncertainties on global analyses and the estimation of uncertainties using machine learning architectures. In the first part of this thesis, we perform global analyses using effective field theory approaches. We start with the Standard Model effective field theory in the top, Higgs, and electroweak sectors, including public experimental likelihoods. In particular, we focus on the role of theory uncertainties and their interplay with correlations. Next, we perform the first global electric dipole moment analysis constraining model parameters from the hadronic- and weak-scale Lagrangians while exploring the impact of theory uncertainties on the parameter constraints. The second part discusses machine-learning methods that have become increasingly important with the growing data from future LHC runs. Thus, we study the calibration of systematic and statistical uncertainties and the precision and reliability of machine learning architectures for amplitude surrogate models. We compare Bayesian neural networks and repulsive ensembles as uncertainty estimators regarding their precision and use Kolmogorov-Arnold networks to explore the impact of activation functions. Overall, this work emphasizes the importance of reducing theory uncertainties and paves new ways of uncertainty estimation using machine learning models in particle physics and global analyses. date: 2025 id_scheme: DOI id_number: 10.11588/heidok.00036898 own_urn: urn:nbn:de:bsz:16-heidok-368984 date_accepted: 2025-07-11 advisor: HASH(0x55bdea550940) language: eng bibsort: ELMERNINAMBRIDGINGTH20250418 full_text_status: public place_of_pub: Heidelberg citation: Elmer, Nina Marie (2025) Bridging Theory and Data Uncertainty-Aware Analyses for the LHC and Beyond. [Dissertation] document_url: https://archiv.ub.uni-heidelberg.de/volltextserver/36898/1/phd_thesis_Elmer.pdf