The use of machine learning techniques for classification is well established. They are applied widely to improve the signal-to-noise ratio and the sensitivity of searches for new physics at colliders. In this study I explore the use of machine learning for optimizing the output of high precision experiments by selecting the most sensitive variables to the quantity being measured. The precise determination of the electroweak mixing angle at the Large Hadron Collider using linear or deep neural network regressors is developed as a test case
In this work, by using the machine learning methods, we study the sensitivities of heavy pseudo-Dira...
This Masters thesis outlines the application of machine learning techniques, predominantly deep lear...
Determination of optimal measurement parameters is essential for measurement experiments. They can b...
The use of machine learning techniques for classification is well established. They are applied wide...
The experiments running at the Large Hadron Collider (LHC) at CERN work in challenging conditions an...
This thesis investigates the use of machine learning techniques to improve the precision of timing m...
The field of artificial intelligence is driven by the goal to provide machines with human-like intel...
The present research in high energy physics as well as in the nuclear physics requires the use of mo...
Machine learning entails a broad range of techniques that have been widely used in Science and Engin...
In this paper, we discuss the way advanced machine learning techniques allow physicists to perform i...
The popularity of Machine Learning (ML) has been increasing in recent decades in almost every area, ...
LDMX is a fixed target experiment designed to search for light dark matter. The experiment will sear...
Machine learning techniques have been used extensively in several domains of Science and Engineering...
Machine learning, which builds on ideas in computer science, statistics, and optimization, focuses o...
To better understand and identify the four top quark production event in proton-proton collisions at...
In this work, by using the machine learning methods, we study the sensitivities of heavy pseudo-Dira...
This Masters thesis outlines the application of machine learning techniques, predominantly deep lear...
Determination of optimal measurement parameters is essential for measurement experiments. They can b...
The use of machine learning techniques for classification is well established. They are applied wide...
The experiments running at the Large Hadron Collider (LHC) at CERN work in challenging conditions an...
This thesis investigates the use of machine learning techniques to improve the precision of timing m...
The field of artificial intelligence is driven by the goal to provide machines with human-like intel...
The present research in high energy physics as well as in the nuclear physics requires the use of mo...
Machine learning entails a broad range of techniques that have been widely used in Science and Engin...
In this paper, we discuss the way advanced machine learning techniques allow physicists to perform i...
The popularity of Machine Learning (ML) has been increasing in recent decades in almost every area, ...
LDMX is a fixed target experiment designed to search for light dark matter. The experiment will sear...
Machine learning techniques have been used extensively in several domains of Science and Engineering...
Machine learning, which builds on ideas in computer science, statistics, and optimization, focuses o...
To better understand and identify the four top quark production event in proton-proton collisions at...
In this work, by using the machine learning methods, we study the sensitivities of heavy pseudo-Dira...
This Masters thesis outlines the application of machine learning techniques, predominantly deep lear...
Determination of optimal measurement parameters is essential for measurement experiments. They can b...