Abstract The use of QCD calculations that include the resummation of soft-collinear logarithms via parton-shower algorithms is currently not possible in PDF fits due to the high computational cost of evaluating observables for each variation of the PDFs. Unfortunately the interpolation methods that are otherwise applied to overcome this issue are not readily generalised to all-order parton-shower contributions. Instead, we propose an approximation based on training a neural network to predict the effect of varying the input parameters of a parton shower on the cross section in a given observable bin, interpolating between the variations of a training data set. This first publication focuses on providing a proof-of-principle for the method, ...
We describe an algorithm for improving subsequent parton shower emissions by full SU(3) color correl...
Recap of last lecture • QCD scattering cross sections factorise. • The factorisation can be cast int...
Initial state evolution in parton shower event generators involves parton distribution functions. We...
We report on the possibility of reweighting parton-shower Monte Carlo predictions for scale variatio...
The accuracy of parton-shower simulations is often a limiting factor in the interpretation of data f...
We report on the possibility of reweighting parton-shower Monte Carlo predictions for scale variatio...
Abstract We make the connection between certain deep learning architectures and the renormalisation ...
International audienceThe accuracy of parton-shower simulations is often a limiting factor in the in...
We demonstrate that the method of interleaved resampling in the context of parton showers can tremen...
We formulate some first fundamental elements of an approach for assessing the logarithmic accuracy o...
We present an implementation of an explainable and physics-aware machine learning model capable of i...
We present the implementation and validation of the techniques used to efficiently evaluate parametr...
AbstractWe have implemented a systematic procedure for combining parton shower algorithms with next-...
Presented here is a technique of propagating uncertainties through the parton shower by means of an ...
Using detailed simulations of calorimeter showers as training data, we investigate the use of deep l...
We describe an algorithm for improving subsequent parton shower emissions by full SU(3) color correl...
Recap of last lecture • QCD scattering cross sections factorise. • The factorisation can be cast int...
Initial state evolution in parton shower event generators involves parton distribution functions. We...
We report on the possibility of reweighting parton-shower Monte Carlo predictions for scale variatio...
The accuracy of parton-shower simulations is often a limiting factor in the interpretation of data f...
We report on the possibility of reweighting parton-shower Monte Carlo predictions for scale variatio...
Abstract We make the connection between certain deep learning architectures and the renormalisation ...
International audienceThe accuracy of parton-shower simulations is often a limiting factor in the in...
We demonstrate that the method of interleaved resampling in the context of parton showers can tremen...
We formulate some first fundamental elements of an approach for assessing the logarithmic accuracy o...
We present an implementation of an explainable and physics-aware machine learning model capable of i...
We present the implementation and validation of the techniques used to efficiently evaluate parametr...
AbstractWe have implemented a systematic procedure for combining parton shower algorithms with next-...
Presented here is a technique of propagating uncertainties through the parton shower by means of an ...
Using detailed simulations of calorimeter showers as training data, we investigate the use of deep l...
We describe an algorithm for improving subsequent parton shower emissions by full SU(3) color correl...
Recap of last lecture • QCD scattering cross sections factorise. • The factorisation can be cast int...
Initial state evolution in parton shower event generators involves parton distribution functions. We...