This document introduces basics in data preparation, feature selection and learning basics for high energy physics tasks. The emphasis is on feature selection by principal component analysis, information gain and significance measures for features. As examples for basic statistical learning algorithms, the maximum a posteriori and maximum likelihood classifiers are shown. Furthermore, a simple rule based classification as a means for automated cut finding is introduced. Finally two toolboxes for the application of statistical learning techniques are introduced
Article focuses on the application of the basic results of the statistical learning theory known as ...
Machine learning methods are now ubiquitous in physics, but often target objectives that are one or ...
Datasets in modern High Energy Physics (HEP) experiments are often described by dozens or even hundr...
This thesis studies the performance of statistical learning methods in high energy and astrophysics...
Modern analysis of HEP data needs advanced statistical tools to separate signal from background. Thi...
We discuss several popular statistical learning methods used in high-energy- and astro-physics analy...
This concise set of course-based notes provides the reader with the main concepts and tools needed t...
Machine learning has emerged as a important tool for separating signal events from associated backgr...
Datasets in modern High Energy Physics (HEP) experiments are often described by dozens or even hundr...
The field of high energy physics aims to discover the underlying structure of matter by searching fo...
The lectures will cover multivariate statistical methods and their applications in High Energy Physi...
The lectures will cover multivariate statistical methods and their applications in High Energy Physi...
International audienceBefore any publication, data analysis of high-energy physics experiments must ...
We give a brief overview of feature selection methods used in statistical classification. We cover f...
The use of computational algorithms, implemented on a computer, to extract information from data has...
Article focuses on the application of the basic results of the statistical learning theory known as ...
Machine learning methods are now ubiquitous in physics, but often target objectives that are one or ...
Datasets in modern High Energy Physics (HEP) experiments are often described by dozens or even hundr...
This thesis studies the performance of statistical learning methods in high energy and astrophysics...
Modern analysis of HEP data needs advanced statistical tools to separate signal from background. Thi...
We discuss several popular statistical learning methods used in high-energy- and astro-physics analy...
This concise set of course-based notes provides the reader with the main concepts and tools needed t...
Machine learning has emerged as a important tool for separating signal events from associated backgr...
Datasets in modern High Energy Physics (HEP) experiments are often described by dozens or even hundr...
The field of high energy physics aims to discover the underlying structure of matter by searching fo...
The lectures will cover multivariate statistical methods and their applications in High Energy Physi...
The lectures will cover multivariate statistical methods and their applications in High Energy Physi...
International audienceBefore any publication, data analysis of high-energy physics experiments must ...
We give a brief overview of feature selection methods used in statistical classification. We cover f...
The use of computational algorithms, implemented on a computer, to extract information from data has...
Article focuses on the application of the basic results of the statistical learning theory known as ...
Machine learning methods are now ubiquitous in physics, but often target objectives that are one or ...
Datasets in modern High Energy Physics (HEP) experiments are often described by dozens or even hundr...