The Search for Dark Photons at LHCb and Machine Learning in Particle Physics

Investigating hypothetical particles called dark photons helps shed light on the nature of dark matter, which is one of the biggest open questions in particle physics. This thesis presents world-leading limits in searches for prompt-like and long-lived dark photons decaying into two muons, as well a...

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Main Author: Weisser, Constantin Niko
Other Authors: Williams, Mike
Format: Thesis
Published: Massachusetts Institute of Technology 2022
Online Access:https://hdl.handle.net/1721.1/142688
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author Weisser, Constantin Niko
author2 Williams, Mike
author_facet Williams, Mike
Weisser, Constantin Niko
author_sort Weisser, Constantin Niko
collection MIT
description Investigating hypothetical particles called dark photons helps shed light on the nature of dark matter, which is one of the biggest open questions in particle physics. This thesis presents world-leading limits in searches for prompt-like and long-lived dark photons decaying into two muons, as well as other dimuon resonances, produced in proton-proton collisions and collected by the LHCb experiment at the Large Hadron Collider at CERN. In addition, this thesis proposes various machine and deep learning techniques and their applications to particle physics: classifier bias on a continuous feature can be controlled more flexibly with a novel moment decomposition loss function than with simple decorrelation, which can enhance bump hunt sensitivity; the first high precision generative model approach to high energy physics simulation has potential to help close the gap between pledged and required resources; we developed a simple, powerful, and novel deep learning approach to vertexing, a technique to determine the location of vertices of sprays of particles, given particle tracks; the statistics chapter is concluded by a pedagogical study of using machine learning classifiers for multivariate goodness-of-fit and two-sample tests.
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spelling mit-1721.1/1426882022-05-25T03:19:21Z The Search for Dark Photons at LHCb and Machine Learning in Particle Physics Weisser, Constantin Niko Williams, Mike Massachusetts Institute of Technology. Department of Physics Investigating hypothetical particles called dark photons helps shed light on the nature of dark matter, which is one of the biggest open questions in particle physics. This thesis presents world-leading limits in searches for prompt-like and long-lived dark photons decaying into two muons, as well as other dimuon resonances, produced in proton-proton collisions and collected by the LHCb experiment at the Large Hadron Collider at CERN. In addition, this thesis proposes various machine and deep learning techniques and their applications to particle physics: classifier bias on a continuous feature can be controlled more flexibly with a novel moment decomposition loss function than with simple decorrelation, which can enhance bump hunt sensitivity; the first high precision generative model approach to high energy physics simulation has potential to help close the gap between pledged and required resources; we developed a simple, powerful, and novel deep learning approach to vertexing, a technique to determine the location of vertices of sprays of particles, given particle tracks; the statistics chapter is concluded by a pedagogical study of using machine learning classifiers for multivariate goodness-of-fit and two-sample tests. Ph.D. 2022-05-24T19:19:00Z 2022-05-24T19:19:00Z 2021-06 2022-05-19T23:48:34.444Z Thesis https://hdl.handle.net/1721.1/142688 In Copyright - Educational Use Permitted Copyright retained by author(s) https://rightsstatements.org/page/InC-EDU/1.0/ application/pdf Massachusetts Institute of Technology
spellingShingle Weisser, Constantin Niko
The Search for Dark Photons at LHCb and Machine Learning in Particle Physics
title The Search for Dark Photons at LHCb and Machine Learning in Particle Physics
title_full The Search for Dark Photons at LHCb and Machine Learning in Particle Physics
title_fullStr The Search for Dark Photons at LHCb and Machine Learning in Particle Physics
title_full_unstemmed The Search for Dark Photons at LHCb and Machine Learning in Particle Physics
title_short The Search for Dark Photons at LHCb and Machine Learning in Particle Physics
title_sort search for dark photons at lhcb and machine learning in particle physics
url https://hdl.handle.net/1721.1/142688
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