Abstract Machine Learning is a powerful tool to reveal and exploit correlations in a multi-dimensional parameter space. Making predictions from such correlations is a highly non-trivial task, in particular when the details of the underlying dynamics of a theoretical model are not fully understood. Using adversarial networks, we include a priori known sources of systematic and theoretical uncertainties during the training. This paves the way to a more reliable event classification on an event-by-event basis, as well as novel approaches to perform parameter fits of particle physics data. We demonstrate the benefits of the method explicitly in an example considering effective field theory extensions of Higgs boson production in association wit...
One burden of high energy physics data analysis is uncertainty within the measurement, both systemat...
As machine learning methods gain traction in the nuclear physics community, especially those methods...
Designing uncertainty-aware deep learning models which are able to provide reasonable uncertainties ...
Machine Learning is a powerful tool to reveal and exploit correlations in a multi-dimensional parame...
Machine learning is a powerful tool to reveal and exploit correlations in a multi-dimensional parame...
Machine Learning is a powerful tool to reveal and exploit correlations in a multi-dimensional parame...
We show how to deal with uncertainties on the Standard Model predictions in an agnostic new physics ...
International audienceWe show how to deal with uncertainties on the Standard Model predictions in an...
We describe a multi-disciplinary project to use machine learning techniques based on neural networks...
Machine learning models are vulnerable to adversarial examples: minor perturbations to input samples...
This paper proposes a new framework that combines Bayesian SegNet with adversarial learning to obtai...
Evaluating loop amplitudes is a time-consuming part of LHC event generation. For di-photon productio...
Deep learning, in particular neural networks, achieved remarkable success in the recent years. Howev...
Following the growing success of generative neural networks in LHC simulations, the crucial questio...
With the advent of increased computational resources and improved algorithms, machine learning-based...
One burden of high energy physics data analysis is uncertainty within the measurement, both systemat...
As machine learning methods gain traction in the nuclear physics community, especially those methods...
Designing uncertainty-aware deep learning models which are able to provide reasonable uncertainties ...
Machine Learning is a powerful tool to reveal and exploit correlations in a multi-dimensional parame...
Machine learning is a powerful tool to reveal and exploit correlations in a multi-dimensional parame...
Machine Learning is a powerful tool to reveal and exploit correlations in a multi-dimensional parame...
We show how to deal with uncertainties on the Standard Model predictions in an agnostic new physics ...
International audienceWe show how to deal with uncertainties on the Standard Model predictions in an...
We describe a multi-disciplinary project to use machine learning techniques based on neural networks...
Machine learning models are vulnerable to adversarial examples: minor perturbations to input samples...
This paper proposes a new framework that combines Bayesian SegNet with adversarial learning to obtai...
Evaluating loop amplitudes is a time-consuming part of LHC event generation. For di-photon productio...
Deep learning, in particular neural networks, achieved remarkable success in the recent years. Howev...
Following the growing success of generative neural networks in LHC simulations, the crucial questio...
With the advent of increased computational resources and improved algorithms, machine learning-based...
One burden of high energy physics data analysis is uncertainty within the measurement, both systemat...
As machine learning methods gain traction in the nuclear physics community, especially those methods...
Designing uncertainty-aware deep learning models which are able to provide reasonable uncertainties ...