Most physics results at the LHC end in a likelihood ratio test. This includes discovery and exclusion for searches as well as mass, cross-section, and coupling measurements. The use of Machine Learning (multivariate) algorithms in HEP is mainly restricted to searches, which can be reduced to classification between two fixed distributions: signal vs. background. I will show how we can extend the use of ML classifiers to distributions parameterized by physical quantities like masses and couplings as well as nuisance parameters associated to systematic uncertainties. This allows for one to approximate the likelihood ratio while still using a high dimensional feature vector for the data. Both the MEM and ABC approaches mentioned above aim to ...
Several theoretical parameter spaces are analysed using techniques from machine learning. First, mac...
Designing new experiments, as well as upgrade of ongoing experiments, is a continuous process in exp...
The lectures will cover multivariate statistical methods and their applications in High Energy Physi...
peer reviewedOne major challenge for the legacy measurements at the LHC is that the likelihood funct...
An important part of the LHC legacy will be precise limits on indirect effects of new physics, frame...
Abstract Machine-learned likelihoods (MLL) combines machine-learning classification techniques with ...
In the early days of the LHC the canonical problems of classification and regression were mostly add...
peer reviewedLikelihood ratio tests are a key tool in many fields of science. In order to evaluate t...
High-energy physics is now entering a new era. Current particle experiments, such as ATLAS at the La...
Advances in data analysis techniques may play a decisive role in the discovery reach of particle col...
We develop, discuss, and compare several inference techniques to constrain theory parameters in coll...
The purpose of this project consisted in formulating the classic hypothesis-statistical construction...
The popularity of Machine Learning (ML) has been increasing in recent decades in almost every area, ...
Machine-learning techniques have become fundamental in high-energy physics and, for new physics sear...
The scientific success of the LHC experiments at CERN highly depends on the availability of computin...
Several theoretical parameter spaces are analysed using techniques from machine learning. First, mac...
Designing new experiments, as well as upgrade of ongoing experiments, is a continuous process in exp...
The lectures will cover multivariate statistical methods and their applications in High Energy Physi...
peer reviewedOne major challenge for the legacy measurements at the LHC is that the likelihood funct...
An important part of the LHC legacy will be precise limits on indirect effects of new physics, frame...
Abstract Machine-learned likelihoods (MLL) combines machine-learning classification techniques with ...
In the early days of the LHC the canonical problems of classification and regression were mostly add...
peer reviewedLikelihood ratio tests are a key tool in many fields of science. In order to evaluate t...
High-energy physics is now entering a new era. Current particle experiments, such as ATLAS at the La...
Advances in data analysis techniques may play a decisive role in the discovery reach of particle col...
We develop, discuss, and compare several inference techniques to constrain theory parameters in coll...
The purpose of this project consisted in formulating the classic hypothesis-statistical construction...
The popularity of Machine Learning (ML) has been increasing in recent decades in almost every area, ...
Machine-learning techniques have become fundamental in high-energy physics and, for new physics sear...
The scientific success of the LHC experiments at CERN highly depends on the availability of computin...
Several theoretical parameter spaces are analysed using techniques from machine learning. First, mac...
Designing new experiments, as well as upgrade of ongoing experiments, is a continuous process in exp...
The lectures will cover multivariate statistical methods and their applications in High Energy Physi...