We present a new machine learning-based Monte Carlo event generator using generative adversarial networks (GANs) that can be trained with calibrated detector simulations to construct a vertex-level event generator free of theoretical assumptions about femtometer scale physics. Our framework includes a GAN-based detector folding as a fast-surrogate model that mimics detector simulators. The framework is tested and validated on simulated inclusive deep-inelastic scattering data along with existing parametrizations for detector simulation, with uncertainty quantification based on a statistical bootstrapping technique. Our results provide for the first time a realistic proof of concept to mitigate theory bias in inferring vertex-level event dis...
First-principle simulations are at the heart of the high-energy physics research program. They link ...
Initial studies have suggested generative adversarial networks (GANs) have promise as fast simulatio...
Machine Learning techniques have been used in different applications by the HEP community: in this t...
We present a new machine learning-based Monte Carlo event generator using generative adversarial net...
We present a new machine learning-based Monte Carlo event generator using generative adversarial net...
Monte Carlo-based event generators have been the primary source for simulating particle collision ex...
We apply generative adversarial network (GAN) technology to build an event generator that simulates ...
We describe a multi-disciplinary project to use machine learning techniques based on neural networks...
We present a study for the generation of events from a physical process with generative deep learnin...
The use of machine learning algorithms is an attractive way to produce very fast detector simulation...
We present an implementation of an explainable and physics-aware machine learning model capable of i...
The increasing luminosities of future data taking at Large Hadron Collider and next generation colli...
Generative machine learning models offer a promising way to efficiently amplify classical Monte Carl...
Abstract: We investigate how a Generative Adversarial Network could be used to generate a list of pa...
Simulating nature and in particular processes in particle physics require expensive computations and...
First-principle simulations are at the heart of the high-energy physics research program. They link ...
Initial studies have suggested generative adversarial networks (GANs) have promise as fast simulatio...
Machine Learning techniques have been used in different applications by the HEP community: in this t...
We present a new machine learning-based Monte Carlo event generator using generative adversarial net...
We present a new machine learning-based Monte Carlo event generator using generative adversarial net...
Monte Carlo-based event generators have been the primary source for simulating particle collision ex...
We apply generative adversarial network (GAN) technology to build an event generator that simulates ...
We describe a multi-disciplinary project to use machine learning techniques based on neural networks...
We present a study for the generation of events from a physical process with generative deep learnin...
The use of machine learning algorithms is an attractive way to produce very fast detector simulation...
We present an implementation of an explainable and physics-aware machine learning model capable of i...
The increasing luminosities of future data taking at Large Hadron Collider and next generation colli...
Generative machine learning models offer a promising way to efficiently amplify classical Monte Carl...
Abstract: We investigate how a Generative Adversarial Network could be used to generate a list of pa...
Simulating nature and in particular processes in particle physics require expensive computations and...
First-principle simulations are at the heart of the high-energy physics research program. They link ...
Initial studies have suggested generative adversarial networks (GANs) have promise as fast simulatio...
Machine Learning techniques have been used in different applications by the HEP community: in this t...