The use of multivariate classifiers has become commonplace in particle physics. To enhance the performance, a series of classifiers is typically trained; this is a technique known as boosting. This paper explores several novel boosting methods that have been designed to produce a uniform selection efficiency in a chosen multivariate space. Such algorithms have a wide range of applications in particle physics, from producing uniform signal selection efficiency across a Dalitz-plot to avoiding the creation of false signal peaks in an invariant mass distribution when searching for new particles
International audienceWe present a new multiclass boosting algorithm called Adaboost.BG. Like the or...
This article sets out to demonstrate how boostingcan serve as a supervised classification method and...
Boosting is a general approach for improving classifier performances. In this research we investigat...
ABSTRACT: The use of multivariate classifiers has become commonplace in particle physics. To enhance...
The use of multivariate classifiers has become commonplace in particle physics. To enhance the perfo...
The use of multivariate classifiers, especially neural networks and decision trees, has become commo...
International audienceMachine learning algorithms are growing increasingly popular in particle physi...
We present a methodology to automate the process of sig-nal enhancement in particle physics by relyi...
Boosting is a general approach for improving classifier performances. In this research we investigat...
The common approach for constructing a classifier for particle selection assumes reasonable consiste...
Machine learning algorithms are growing increasingly popular in particle physics analyses, where the...
Boosting approaches are based on the idea that high-quality learning algorithms can be formed by rep...
By adding a spatial regularization kernel to a standard loss function formulation of the boosting pr...
ISBN:978-2-7598-1032-1International audienceMultivariate discrimination or classification is one of ...
We present an extended abstract about boosting. We describe first in section 1 (in a self-contained ...
International audienceWe present a new multiclass boosting algorithm called Adaboost.BG. Like the or...
This article sets out to demonstrate how boostingcan serve as a supervised classification method and...
Boosting is a general approach for improving classifier performances. In this research we investigat...
ABSTRACT: The use of multivariate classifiers has become commonplace in particle physics. To enhance...
The use of multivariate classifiers has become commonplace in particle physics. To enhance the perfo...
The use of multivariate classifiers, especially neural networks and decision trees, has become commo...
International audienceMachine learning algorithms are growing increasingly popular in particle physi...
We present a methodology to automate the process of sig-nal enhancement in particle physics by relyi...
Boosting is a general approach for improving classifier performances. In this research we investigat...
The common approach for constructing a classifier for particle selection assumes reasonable consiste...
Machine learning algorithms are growing increasingly popular in particle physics analyses, where the...
Boosting approaches are based on the idea that high-quality learning algorithms can be formed by rep...
By adding a spatial regularization kernel to a standard loss function formulation of the boosting pr...
ISBN:978-2-7598-1032-1International audienceMultivariate discrimination or classification is one of ...
We present an extended abstract about boosting. We describe first in section 1 (in a self-contained ...
International audienceWe present a new multiclass boosting algorithm called Adaboost.BG. Like the or...
This article sets out to demonstrate how boostingcan serve as a supervised classification method and...
Boosting is a general approach for improving classifier performances. In this research we investigat...