A neural-network based algorithm to identify fake tracks in the LHCb pattern recognition is presented. This algorithm, called ghost probability, retains more than 99 % of well reconstructed tracks while reducing the number of fake tracks by 60 %. It is fast enough to fit into the CPU time budget of the software trigger farm and thus reduces the combinatorics of the decay reconstructions, as well as the number of tracks that need to be processed by the particle identification algorithms. As a result, it strongly contributes to the achievement of having the same reconstruction online and offline in the LHCb experiment in Run II of the LHC
This note reports on the performance of the complete LHCb track reconstruction, including both the t...
Accurate particle identification (PID) is one of the most important aspects of the LHCb experiment. ...
A Neural Network approach for the discrimination of LHC events according to their invariant-mass top...
The LHCb detector at the LHC is a general purpose detector in the forward region with a focus on rec...
The LHCb detector at the LHC is a general purpose detector in the forward region with a focus on rec...
To study LHC events it is necessary to reconstruct each particle's trajectory. Track reconstruction ...
The LHCb experiment will undergo a major upgrade for LHC Run III, scheduled to start taking data in ...
The LHCb experiment will undergo a major upgrade for LHC Run III, scheduled to start taking data in ...
The LHCb experiment will undergo a major upgrade for LHC Run III, scheduled to start taking data in ...
The LHCb experiment will undergo a major upgrade for LHC Run III, scheduled to start taking data in ...
The LHCb experiment will undergo a major upgrade for LHC Run III, scheduled to start taking data in ...
The LHCb track reconstruction uses sophisticated pattern recognition algorithms to reconstruct traje...
The physics reach of the HL-LHC will be limited by how efficiently the experiments can use the avail...
The physics reach of the HL-LHC will be limited by how efficiently the experiments can use the avail...
The physics reach of the HL-LHC will be limited by how efficiently the experiments can use the avail...
This note reports on the performance of the complete LHCb track reconstruction, including both the t...
Accurate particle identification (PID) is one of the most important aspects of the LHCb experiment. ...
A Neural Network approach for the discrimination of LHC events according to their invariant-mass top...
The LHCb detector at the LHC is a general purpose detector in the forward region with a focus on rec...
The LHCb detector at the LHC is a general purpose detector in the forward region with a focus on rec...
To study LHC events it is necessary to reconstruct each particle's trajectory. Track reconstruction ...
The LHCb experiment will undergo a major upgrade for LHC Run III, scheduled to start taking data in ...
The LHCb experiment will undergo a major upgrade for LHC Run III, scheduled to start taking data in ...
The LHCb experiment will undergo a major upgrade for LHC Run III, scheduled to start taking data in ...
The LHCb experiment will undergo a major upgrade for LHC Run III, scheduled to start taking data in ...
The LHCb experiment will undergo a major upgrade for LHC Run III, scheduled to start taking data in ...
The LHCb track reconstruction uses sophisticated pattern recognition algorithms to reconstruct traje...
The physics reach of the HL-LHC will be limited by how efficiently the experiments can use the avail...
The physics reach of the HL-LHC will be limited by how efficiently the experiments can use the avail...
The physics reach of the HL-LHC will be limited by how efficiently the experiments can use the avail...
This note reports on the performance of the complete LHCb track reconstruction, including both the t...
Accurate particle identification (PID) is one of the most important aspects of the LHCb experiment. ...
A Neural Network approach for the discrimination of LHC events according to their invariant-mass top...