The interpretation of Large Hadron Collider (LHC) data in the framework of Beyond the Standard Model (BSM) theories is hampered by the need to run computationally expensive event generators and detector simulators. Performing statistically convergent scans of high-dimensional BSM theories is consequently challenging, and in practice unfeasible for very high-dimensional BSM theories. We present here a new machine learning method that accelerates the interpretation of LHC data, by learning the relationship between BSM theory parameters and data. As a proof-of-concept, we demonstrate that this technique accurately predicts natural SUSY signal events in two signal regions at the High Luminosity LHC, up to four orders of magnitude faster than st...
A review of machine learning for Higgs boson physics at the LHC at both ATLAS and CMS). It includes ...
Contains fulltext : 173611.pdf (preprint version ) (Open Access)25 p
The Large Hadron Collider is a indescribably complicated system with numerous intertwined systems, e...
The interpretation of Large Hadron Collider (LHC) data in the framework of Beyond the Standard Model...
A key research question at the Large Hadron Collider is the test of models of new physics. Testing i...
Recent searches for supersymmetric particles at the Large Hadron Collider have been unsuccessful in ...
Recent searches for supersymmetric particles at the Large Hadron Collider have been unsuccessful in ...
Most of the computing resources pledged to the LHCb experiment at CERN are necessary to the producti...
Machine learning entails a broad range of techniques that have been widely used in Science and Engin...
Several theoretical parameter spaces are analysed using techniques from machine learning. First, mac...
The LHC produces huge amounts of data in which signs of new physics can be hidden. To take full adva...
We describe the outcome of a data challenge conducted as part of the Dark Machines (https://www.dark...
This work presents techniques for addressing the black box problem for deep learning in high-energy ...
Abstract We investigate enhancing the sensitivity of new physics searches at the LHC by machine lear...
We describe the outcome of a data challenge conducted as part of the Dark Machines Initiative and th...
A review of machine learning for Higgs boson physics at the LHC at both ATLAS and CMS). It includes ...
Contains fulltext : 173611.pdf (preprint version ) (Open Access)25 p
The Large Hadron Collider is a indescribably complicated system with numerous intertwined systems, e...
The interpretation of Large Hadron Collider (LHC) data in the framework of Beyond the Standard Model...
A key research question at the Large Hadron Collider is the test of models of new physics. Testing i...
Recent searches for supersymmetric particles at the Large Hadron Collider have been unsuccessful in ...
Recent searches for supersymmetric particles at the Large Hadron Collider have been unsuccessful in ...
Most of the computing resources pledged to the LHCb experiment at CERN are necessary to the producti...
Machine learning entails a broad range of techniques that have been widely used in Science and Engin...
Several theoretical parameter spaces are analysed using techniques from machine learning. First, mac...
The LHC produces huge amounts of data in which signs of new physics can be hidden. To take full adva...
We describe the outcome of a data challenge conducted as part of the Dark Machines (https://www.dark...
This work presents techniques for addressing the black box problem for deep learning in high-energy ...
Abstract We investigate enhancing the sensitivity of new physics searches at the LHC by machine lear...
We describe the outcome of a data challenge conducted as part of the Dark Machines Initiative and th...
A review of machine learning for Higgs boson physics at the LHC at both ATLAS and CMS). It includes ...
Contains fulltext : 173611.pdf (preprint version ) (Open Access)25 p
The Large Hadron Collider is a indescribably complicated system with numerous intertwined systems, e...