The problem of identifying jets at CERN LEP and DESY HERA is studied. Identification using jet energies and fragmentation properties is treated separately in order to investigate the degree of quark-gluon separation that can be achieved by either of these approaches. In the case of the fragmentation-based identification, a neural network is used, and a test of the dependence on the jet production process and the fragmentation model is done. Instead of working with the separation variables directly, these are used to calculate probabilities of having a specific type of jet, according to Bayes’ theorem. This offers a direct interpretation of the performance of the jet identification and provides a simple means of combining the results of the ...
Introduction From theoretical QCD predictions a larger particle multiplicity is expected in gluon j...
Abstract Previous studies have demonstrated the utility and applicability of machine learning techni...
As the energy scales of high energy physics experiments increase, the amount of data which is avail...
The problem of identifying jets at LEP and HERA has been studied. Identification using jet energies ...
A neural network method for identifying the ancestor of a hadron jet is presented. The idea is to fi...
This thesis describes the application of an Artificial Neural Network classifier to identify the par...
The jets of b-hadrons and gluons in QCD Monte Carlo samples can be identified and separated from lig...
Discriminating between quark- and gluon-initiated jets has long been a central focus of jet substruc...
As the energy scales of high energy physics experiments increase, the amount of data which is availa...
In the first part of this diploma thesis, the current version of the KIT Flavor Separator, a neural ...
We investigate the performance of a jet identification algorithm based on an interaction network to ...
We investigate the performance of a jet identification algorithm based on interaction networks (JEDI...
At the Large Hadron Collider, the identification of jets originating from b quarks is important for ...
We investigate the performance of a jet identification algorithm based on interaction networks (JEDI...
We investigate the performance of a jet identification algorithm based on interaction networks (JEDI...
Introduction From theoretical QCD predictions a larger particle multiplicity is expected in gluon j...
Abstract Previous studies have demonstrated the utility and applicability of machine learning techni...
As the energy scales of high energy physics experiments increase, the amount of data which is avail...
The problem of identifying jets at LEP and HERA has been studied. Identification using jet energies ...
A neural network method for identifying the ancestor of a hadron jet is presented. The idea is to fi...
This thesis describes the application of an Artificial Neural Network classifier to identify the par...
The jets of b-hadrons and gluons in QCD Monte Carlo samples can be identified and separated from lig...
Discriminating between quark- and gluon-initiated jets has long been a central focus of jet substruc...
As the energy scales of high energy physics experiments increase, the amount of data which is availa...
In the first part of this diploma thesis, the current version of the KIT Flavor Separator, a neural ...
We investigate the performance of a jet identification algorithm based on an interaction network to ...
We investigate the performance of a jet identification algorithm based on interaction networks (JEDI...
At the Large Hadron Collider, the identification of jets originating from b quarks is important for ...
We investigate the performance of a jet identification algorithm based on interaction networks (JEDI...
We investigate the performance of a jet identification algorithm based on interaction networks (JEDI...
Introduction From theoretical QCD predictions a larger particle multiplicity is expected in gluon j...
Abstract Previous studies have demonstrated the utility and applicability of machine learning techni...
As the energy scales of high energy physics experiments increase, the amount of data which is avail...