This thesis studies statistical inference in the high energy physics unfolding problem, which is an ill-posed inverse problem arising in data analysis at the Large Hadron Collider (LHC) at CERN. Any measurement made at the LHC is smeared by the finite resolution of the particle detectors and the goal in unfolding is to use these smeared measurements to make nonparametric inferences about the underlying particle spectrum. Mathematically the problem consists in inferring the intensity function of an indirectly observed Poisson point process. Rigorous uncertainty quantification of the unfolded spectrum is of central importance to particle physicists. The problem is typically solved by first forming a regularized point estimator in the unfolded...
Collider data must be corrected for detector effects ("unfolded") to be compared with many theoretic...
We are now in the era of high precision particle physics, spurred on by a wealth of new data from t...
The MadAnalysis 5 framework can be used to assess the potential of various LHC analyses for unraveli...
The high energy physics unfolding problem is an important statistical inverse problem in data analys...
Unfolding is an ill-posed inverse problem in particle physics aiming to infer a true particle-level ...
We show how an inaccurate determination of experimental uncertainty correlations in high-precision L...
A comprehensive uncertainty estimation is vital for the precision program of the LHC. While experime...
Advances in data analysis techniques may play a decisive role in the discovery reach of particle col...
Calibration is a common experimental physics problem, whose goal is to infer the value and uncertain...
Finite detector resolution and limited acceptance require to apply unfolding methods in high energy ...
Abstract Since its start of data taking, the LHC has provided an impressive wealth of information on...
In this thesis a new method for the unfolding of γ-ray spectra using Bayesian statistics has been in...
In light of the recent discovery of a Higgs boson at the LHC and of the contemporary absence of sign...
The theoretical uncertainties of the Large Hadron Collider (LHC) observables are decreasing with the...
Calibration is a common experimental physics problem, whose goal is to infer the value and uncertain...
Collider data must be corrected for detector effects ("unfolded") to be compared with many theoretic...
We are now in the era of high precision particle physics, spurred on by a wealth of new data from t...
The MadAnalysis 5 framework can be used to assess the potential of various LHC analyses for unraveli...
The high energy physics unfolding problem is an important statistical inverse problem in data analys...
Unfolding is an ill-posed inverse problem in particle physics aiming to infer a true particle-level ...
We show how an inaccurate determination of experimental uncertainty correlations in high-precision L...
A comprehensive uncertainty estimation is vital for the precision program of the LHC. While experime...
Advances in data analysis techniques may play a decisive role in the discovery reach of particle col...
Calibration is a common experimental physics problem, whose goal is to infer the value and uncertain...
Finite detector resolution and limited acceptance require to apply unfolding methods in high energy ...
Abstract Since its start of data taking, the LHC has provided an impressive wealth of information on...
In this thesis a new method for the unfolding of γ-ray spectra using Bayesian statistics has been in...
In light of the recent discovery of a Higgs boson at the LHC and of the contemporary absence of sign...
The theoretical uncertainties of the Large Hadron Collider (LHC) observables are decreasing with the...
Calibration is a common experimental physics problem, whose goal is to infer the value and uncertain...
Collider data must be corrected for detector effects ("unfolded") to be compared with many theoretic...
We are now in the era of high precision particle physics, spurred on by a wealth of new data from t...
The MadAnalysis 5 framework can be used to assess the potential of various LHC analyses for unraveli...