%0 Thesis
%A Bliewert, Bryan
%T Implementation of the Matrix Element Method and a Jet Clustering Algorithm with Machine Learning at Future Higgs Factories
%I Technische Universität München
%V Masterarbeit
%M PUBDB-2025-01265
%P 104
%D 2025
%Z Masterarbeit, Technische Universität München, 2024
%X A top priority of future collider programs is to measure the value of the Higgs self-coupling λ. Through double Higgs production (ZHH), this is possible by direct measurement at lepton col-liders. However, both reconstruction and analysis face challenges due to the high number of jets, misclustering effects in the jet clustering procedure and separation of the signal from irreducible backgrounds (ZZH). In this thesis, approaches and solutions for both are presented. First, a jet clustering algorithm based on Graph Neural Networks and Spectral Clustering is presented and shown to produce nearly identical as the benchmark (Durham algorithm). Then, for the analysis, multiple multivariate methods are explored, such as likelihood-ratio testing with the Matrix-Element-Method and direct classification using machine learning models including transformers and Deep Sets. The best results give a final average precision and AUROC for separating ZHH and ZZH events correctly of 67
%F PUB:(DE-HGF)19
%9 Master Thesis
%R 10.3204/PUBDB-2025-01265
%U https://bib-pubdb1.desy.de/record/626028