Abstract We make the connection between certain deep learning architectures and the renormalisation group explicit in the context of QCD by using a deep learning network to construct a toy parton shower model. The model aims to describe proton-proton collisions at the Large Hadron Collider. A convolutional autoencoder learns a set of kernels that efficiently encode the behaviour of fully showered QCD collision events. The network is structured recursively so as to ensure self-similarity, and the number of trained network parameters is low. Randomness is introduced via a novel custom masking layer, which also preserves existing parton splittings by using layer-skipping connections. By applying a shower merging procedure, the network can be e...
Vector boson fusion established itself as a highly reliable channel to probe the Higgs boson and an ...
Renormalization group (RG) methods, which model the way in which the effec-tive behavior of a system...
Motivated by the computational limitations of simulating interactions of particles in highly-granula...
We present an implementation of an explainable and physics-aware machine learning model capable of i...
We describe a multi-disciplinary project to use machine learning techniques based on neural networks...
Using detailed simulations of calorimeter showers as training data, we investigate the use of deep l...
Using detailed simulations of calorimeter showers as training data, we investigate the use of deep l...
Using detailed simulations of calorimeter showers as training data, we investigate the use of deep l...
A key question for machine learning approaches in particle physics is how to best represent and lear...
Abstract The use of QCD calculations that include the resummation of soft-collinear logarithms via p...
In this proceeding, we review our recent work using deep convolutional neural network (CNN) to ident...
Using deep convolutional neural network (CNN), the nature of the QCD transition can be identified fr...
Collisions at the CERN Large Hadron Collider (LHC) produce showers of particles that are detected by...
Abstract Recent progress in applying machine learning for jet physics has been built upon an analogy...
Perturbative quantum chromodynamics (QCD) ceases to be applicable at low interaction energies due to...
Vector boson fusion established itself as a highly reliable channel to probe the Higgs boson and an ...
Renormalization group (RG) methods, which model the way in which the effec-tive behavior of a system...
Motivated by the computational limitations of simulating interactions of particles in highly-granula...
We present an implementation of an explainable and physics-aware machine learning model capable of i...
We describe a multi-disciplinary project to use machine learning techniques based on neural networks...
Using detailed simulations of calorimeter showers as training data, we investigate the use of deep l...
Using detailed simulations of calorimeter showers as training data, we investigate the use of deep l...
Using detailed simulations of calorimeter showers as training data, we investigate the use of deep l...
A key question for machine learning approaches in particle physics is how to best represent and lear...
Abstract The use of QCD calculations that include the resummation of soft-collinear logarithms via p...
In this proceeding, we review our recent work using deep convolutional neural network (CNN) to ident...
Using deep convolutional neural network (CNN), the nature of the QCD transition can be identified fr...
Collisions at the CERN Large Hadron Collider (LHC) produce showers of particles that are detected by...
Abstract Recent progress in applying machine learning for jet physics has been built upon an analogy...
Perturbative quantum chromodynamics (QCD) ceases to be applicable at low interaction energies due to...
Vector boson fusion established itself as a highly reliable channel to probe the Higgs boson and an ...
Renormalization group (RG) methods, which model the way in which the effec-tive behavior of a system...
Motivated by the computational limitations of simulating interactions of particles in highly-granula...