International audienceThis paper deals with variable selection in the regression and binary classification frameworks. It proposes an automatic and exhaustive procedure which relies on the use of the CART algorithm and on model selection via penalization. This work, of theoretical nature, aims at determining adequate penalties, i.e. penalties which allow to get oracle type inequalities justifying the performance of the proposed procedure. Since the exhaustive procedure can not be executed when the number of variables is too large, a more practical procedure is also proposed and still theoretically validated. A simulation study completes the theoretical results
Variable selection is an essential tool for gaining knowledge on a problem or phenomenon, by identif...
Variable selection is an essential tool for gaining knowledge on a problem or phenomenon, by identif...
Variable selection is an essential tool for gaining knowledge on a problem or phenomenon, by identif...
This paper deals with variable selection in regression and binary classification framework...
This paper deals with variable selection in the regression or binary classification frameworks. It p...
AbstractIn this paper, the problem of variable selection in classification is considered. On the bas...
CETTE THESE S'INSCRIT DANS LE CADRE DE LA STATISTIQUE NON PARAMETRIQUE ET PORTE SUR LA CLASSIFICATIO...
International audienceThis article investigates unsupervised classification techniques for categoric...
This thesis deals with non parametric statistics and is related to classification and discrimination...
Within the design of a machine learning-based solution for classification or regression problems, va...
Within the design of a machine learning-based solution for classification or regression problems, va...
Within the design of a machine learning-based solution for classification or regression problems, va...
Within the design of a machine learning-based solution for classification or regression problems, va...
Within the design of a machine learning-based solution for classification or regression problems, va...
AbstractIn this paper, the problem of variable selection in classification is considered. On the bas...
Variable selection is an essential tool for gaining knowledge on a problem or phenomenon, by identif...
Variable selection is an essential tool for gaining knowledge on a problem or phenomenon, by identif...
Variable selection is an essential tool for gaining knowledge on a problem or phenomenon, by identif...
This paper deals with variable selection in regression and binary classification framework...
This paper deals with variable selection in the regression or binary classification frameworks. It p...
AbstractIn this paper, the problem of variable selection in classification is considered. On the bas...
CETTE THESE S'INSCRIT DANS LE CADRE DE LA STATISTIQUE NON PARAMETRIQUE ET PORTE SUR LA CLASSIFICATIO...
International audienceThis article investigates unsupervised classification techniques for categoric...
This thesis deals with non parametric statistics and is related to classification and discrimination...
Within the design of a machine learning-based solution for classification or regression problems, va...
Within the design of a machine learning-based solution for classification or regression problems, va...
Within the design of a machine learning-based solution for classification or regression problems, va...
Within the design of a machine learning-based solution for classification or regression problems, va...
Within the design of a machine learning-based solution for classification or regression problems, va...
AbstractIn this paper, the problem of variable selection in classification is considered. On the bas...
Variable selection is an essential tool for gaining knowledge on a problem or phenomenon, by identif...
Variable selection is an essential tool for gaining knowledge on a problem or phenomenon, by identif...
Variable selection is an essential tool for gaining knowledge on a problem or phenomenon, by identif...