We show how an event topology classification based on deep learning could be used to improve the purity of data samples selected in real-time at the Large Hadron Collider. We consider different data representations, on which different kinds of multi-class classifiers are trained. Both raw data and high-level features are utilized. In the considered examples, a filter based on the classifier’s score can be trained to retain ∼99% of the interesting events and reduce the false-positive rate by more than one order of magnitude. By operating such a filter as part of the online event selection infrastructure of the LHC experiments, one could benefit from a more flexible and inclusive selection strategy while reducing the amount of downstream reso...
A Neural Network approach for the discrimination of LHC events according to their invariant-mass top...
We present a fast simulation application based on a Deep Neural Network, designed to create large an...
We describe the outcome of a data challenge conducted as part of the Dark Machines Initiative and th...
We show how an event topology classification based on deep learning could be used to improve the pur...
An essential part of new physics searches at the Large Hadron Collider (LHC) at CERN involves event ...
We describe the outcome of a data challenge conducted as part of the Dark Machines (https://www.dark...
The LHC experiment produces an overwhelming amount of data, the vast majority of which consists of Q...
In this project a classifier of new physics events is developed using machine learning, in particula...
The LHCb experiment will undergo a major upgrade for LHC Run III, scheduled to start taking data in ...
Abstract High data volumes and data throughput are a central feature of the CMS detector experiment...
Recent advances in deep learning have seen great success in the realms of computer vision, natural l...
The purpose of this thesis is to apply more recent machine learning algorithms based on neural netwo...
This paper describes the construction of novel end-to-end image-based classifiers that directly leve...
This work presents techniques for addressing the black box problem for deep learning in high-energy ...
In this thesis we have searched for new physics phenomena predicted by Supersymmetry and Dark Matter...
A Neural Network approach for the discrimination of LHC events according to their invariant-mass top...
We present a fast simulation application based on a Deep Neural Network, designed to create large an...
We describe the outcome of a data challenge conducted as part of the Dark Machines Initiative and th...
We show how an event topology classification based on deep learning could be used to improve the pur...
An essential part of new physics searches at the Large Hadron Collider (LHC) at CERN involves event ...
We describe the outcome of a data challenge conducted as part of the Dark Machines (https://www.dark...
The LHC experiment produces an overwhelming amount of data, the vast majority of which consists of Q...
In this project a classifier of new physics events is developed using machine learning, in particula...
The LHCb experiment will undergo a major upgrade for LHC Run III, scheduled to start taking data in ...
Abstract High data volumes and data throughput are a central feature of the CMS detector experiment...
Recent advances in deep learning have seen great success in the realms of computer vision, natural l...
The purpose of this thesis is to apply more recent machine learning algorithms based on neural netwo...
This paper describes the construction of novel end-to-end image-based classifiers that directly leve...
This work presents techniques for addressing the black box problem for deep learning in high-energy ...
In this thesis we have searched for new physics phenomena predicted by Supersymmetry and Dark Matter...
A Neural Network approach for the discrimination of LHC events according to their invariant-mass top...
We present a fast simulation application based on a Deep Neural Network, designed to create large an...
We describe the outcome of a data challenge conducted as part of the Dark Machines Initiative and th...