In high-energy particle physics, complex Monte Carlo (MC) simulations are needed to compare theory predictions to measurable quantities. Many and large MC samples are needed to be generated to take into account all the systematics. Therefore, the MC statistics (and hence the MC modeling uncertainties) become a limiting factor for most measurements. Moreover, the significant computational cost of these programs becomes a bottleneck in most physics analyses. Therefore, it is extremely important to find a way to reduce the MC samples generated to decrease the MC statistical uncertainties and lower the computational cost. In these proceedings, we evaluate an approach called Deep neural network using Classification for Tuning and Reweighting (DC...
At the CMS experiment, a growing reliance on the fast Monte Carlo application (FastSim) will accompa...
We describe a multi-disciplinary project to use machine learning techniques based on neural networks...
The thesis research involves the application of machine learning (ML) to various parts of a Monte Ca...
In high-energy particle physics, complex Monte Carlo (MC) simulations are needed to compare theory p...
In particle physics, Monte Carlo (MC) event generators are needed to compare theory to the measured ...
In high-energy particle physics, complex Monte Carlo simulations are needed to connect the theory to...
In high-energy particle physics, complex Monte Carlo simulations are needed to connect the theory to...
Abstract One of the key tasks of any particle collider is measurement. In practice, this is often do...
© 2020 authors. Monte Carlo event generators are an essential tool for data analysis in collider phy...
Significant advances in deep learning have led to more widely used and precise neural network-based ...
Significant advances in deep learning have led to more widely used and precise neural network-based ...
To better understand and identify the four top quark production event in proton-proton collisions at...
We propose the use of Monte Carlo histogram reweighting to extrapolate predictions of machine learni...
One burden of high energy physics data analysis is uncertainty within the measurement, both systemat...
In this analysis the usage of deep neural networks for an improved event selection forthe top-quark-...
At the CMS experiment, a growing reliance on the fast Monte Carlo application (FastSim) will accompa...
We describe a multi-disciplinary project to use machine learning techniques based on neural networks...
The thesis research involves the application of machine learning (ML) to various parts of a Monte Ca...
In high-energy particle physics, complex Monte Carlo (MC) simulations are needed to compare theory p...
In particle physics, Monte Carlo (MC) event generators are needed to compare theory to the measured ...
In high-energy particle physics, complex Monte Carlo simulations are needed to connect the theory to...
In high-energy particle physics, complex Monte Carlo simulations are needed to connect the theory to...
Abstract One of the key tasks of any particle collider is measurement. In practice, this is often do...
© 2020 authors. Monte Carlo event generators are an essential tool for data analysis in collider phy...
Significant advances in deep learning have led to more widely used and precise neural network-based ...
Significant advances in deep learning have led to more widely used and precise neural network-based ...
To better understand and identify the four top quark production event in proton-proton collisions at...
We propose the use of Monte Carlo histogram reweighting to extrapolate predictions of machine learni...
One burden of high energy physics data analysis is uncertainty within the measurement, both systemat...
In this analysis the usage of deep neural networks for an improved event selection forthe top-quark-...
At the CMS experiment, a growing reliance on the fast Monte Carlo application (FastSim) will accompa...
We describe a multi-disciplinary project to use machine learning techniques based on neural networks...
The thesis research involves the application of machine learning (ML) to various parts of a Monte Ca...