One burden of high energy physics data analysis is uncertainty within the measurement, both systematically and statistically. Even with sophisticated neural network techniques that are used to assist in high energy physics measurements, the resulting measurement may suffer from both types of uncertainties. Fortunately, most types of systematic uncertainties are based on knowledge from information such as theoretical assumptions, for which the range and behaviour are known. It has been proposed to mitigate such systematic uncertainties by using a new type of neural network called adversarial neural network (ANN) that would make the discriminator less sensitive to these uncertainties, but this has not yet been demonstrated in a real LHC analy...
In the first part of this diploma thesis, the current version of the KIT Flavor Separator, a neural ...
Most of the modern analyses in high energy physics use signal-versus-background classification techn...
The identification of top quarks is motivated by their high mass and strong coupling to the Higgs me...
To better understand and identify the four top quark production event in proton-proton collisions at...
Neural networks (NNs) provide a powerful and flexible tool for selecting a signal from a larger back...
In this analysis the usage of deep neural networks for an improved event selection forthe top-quark-...
The production of four top quarks has been predicted by the Standard Model (SM) and has been conside...
We present a search for electroweak production of single top quarks in ≈90 pb-1 of data collected wi...
The search for four-top-quark production with four leptons as a final product at $\sqrt{s} = 13 \mbo...
AbstractWe present a search for electroweak production of single top quarks in ≈90 pb−1 of data coll...
Standard model (SM) four-top quark production, where proton-proton collisions produce two top-antito...
In the proton-antiproton collisions at the Fermilab Tevatron collider, individual top quarks are exp...
We present a search for electroweak production of single top quarks in ≈90 pb−1 of data collected wi...
The application of neural networks in high energy physics to the separation of signal from backgroun...
Deep neural networks (DNNs) have been applied to the fields of computer vision and natural language ...
In the first part of this diploma thesis, the current version of the KIT Flavor Separator, a neural ...
Most of the modern analyses in high energy physics use signal-versus-background classification techn...
The identification of top quarks is motivated by their high mass and strong coupling to the Higgs me...
To better understand and identify the four top quark production event in proton-proton collisions at...
Neural networks (NNs) provide a powerful and flexible tool for selecting a signal from a larger back...
In this analysis the usage of deep neural networks for an improved event selection forthe top-quark-...
The production of four top quarks has been predicted by the Standard Model (SM) and has been conside...
We present a search for electroweak production of single top quarks in ≈90 pb-1 of data collected wi...
The search for four-top-quark production with four leptons as a final product at $\sqrt{s} = 13 \mbo...
AbstractWe present a search for electroweak production of single top quarks in ≈90 pb−1 of data coll...
Standard model (SM) four-top quark production, where proton-proton collisions produce two top-antito...
In the proton-antiproton collisions at the Fermilab Tevatron collider, individual top quarks are exp...
We present a search for electroweak production of single top quarks in ≈90 pb−1 of data collected wi...
The application of neural networks in high energy physics to the separation of signal from backgroun...
Deep neural networks (DNNs) have been applied to the fields of computer vision and natural language ...
In the first part of this diploma thesis, the current version of the KIT Flavor Separator, a neural ...
Most of the modern analyses in high energy physics use signal-versus-background classification techn...
The identification of top quarks is motivated by their high mass and strong coupling to the Higgs me...