International audienceThe least absolute shrinkage and selection operator lasso is a promising feature selection technique. However, it has traditionally not been a focus of research in ensemble classification methods. In this paper, we propose an algorithm for building an ensemble of classifiers in lasso feature subspaces. The algorithm consists of two stages: the first is a lasso based feature subset selection cycle, which tries to find several discriminant feature subspaces; the second is an ensemble based decisional system that intends to preserve the classification performances in case of nonstationary perturbations. Experimental results on the two-class textured image segmentation problem assess the effectiveness of the proposed appro...
In order to solve large-scale lasso problems, screening algorithms have been developed that discard ...
Feature subset selection is an essential pre-processing task in machine learning and pattern recogni...
International audienceIn this paper, we present a robust data classification method based on an ense...
International audienceThe least absolute shrinkage and selection operator (lasso) is a promising fea...
International audienceIn this paper, we present a new feature subset selection method that intends t...
International audienceThis paper presents a feature subspaces selection method which uses an ensembl...
International audienceThe presence of noise, loss of information or feature nonstationarity in data ...
Robustness or stability of feature selection techniques is a, topic of recent interest, and is an im...
AbstractIn this paper the application of ensembles of instance selection algorithms to improve the q...
Robustness of feature selection techniques is a topic of recent interest, especially in high dimensi...
A popular method for creating an accurate classifier from a set of training data is to build severa...
International audienceThe ensemble classifier, based on Fisher Linear Discriminant base learners, wa...
An ensemble method produces diverse classifiers and combines their decisions for ensemble’s decision...
The traditional motivation behind feature selection al-gorithms is to nd the best subset of features...
AbstractFeature selection is a technique to choose a subset of variables from the multidimensional d...
In order to solve large-scale lasso problems, screening algorithms have been developed that discard ...
Feature subset selection is an essential pre-processing task in machine learning and pattern recogni...
International audienceIn this paper, we present a robust data classification method based on an ense...
International audienceThe least absolute shrinkage and selection operator (lasso) is a promising fea...
International audienceIn this paper, we present a new feature subset selection method that intends t...
International audienceThis paper presents a feature subspaces selection method which uses an ensembl...
International audienceThe presence of noise, loss of information or feature nonstationarity in data ...
Robustness or stability of feature selection techniques is a, topic of recent interest, and is an im...
AbstractIn this paper the application of ensembles of instance selection algorithms to improve the q...
Robustness of feature selection techniques is a topic of recent interest, especially in high dimensi...
A popular method for creating an accurate classifier from a set of training data is to build severa...
International audienceThe ensemble classifier, based on Fisher Linear Discriminant base learners, wa...
An ensemble method produces diverse classifiers and combines their decisions for ensemble’s decision...
The traditional motivation behind feature selection al-gorithms is to nd the best subset of features...
AbstractFeature selection is a technique to choose a subset of variables from the multidimensional d...
In order to solve large-scale lasso problems, screening algorithms have been developed that discard ...
Feature subset selection is an essential pre-processing task in machine learning and pattern recogni...
International audienceIn this paper, we present a robust data classification method based on an ense...