The framework of this paper is supervised learning using classification trees. Two types of variables play a role in the definition of the classification rule, namely a response variable and a set of predictors. The tree classifier is built up by a recursive partitioning of the prediction space such to provide internally homogeneous groups of objects with respect o the response classes. In the following, we consider the role played by an instrumental variable to stratify either the variables or the objects. This yields to introduce a tree-based methodology for conditional classification. Two special cases will be discussed to grow multiple discriminant trees and partial predictability trees. These approaches use discriminant analysis and pr...
International audienceThis paper addresses the training of classification trees for weakly labelled ...
An application of nonparametric predictive inference for multinomial data (NPI) to classification ta...
The party package (Hothorn, Hornik, and Zeileis 2006) aims at providing a recur-sive part(y)itioning...
The framework of this paper is supervised learning using classification trees. Two types of variable...
We consider the problem of classifying an unknown observation into one of several populations using ...
An algorithm for learning decision trees for classification and prediction is described which conver...
This paper introduces the concept of the conditional impurity in the framework of tree-based models...
Linear discriminant analysis (LDA) is a part of classification methods that has been widely used in ...
The training objectives of the learning object are: 1) To define a classification tree; and 2) To ap...
This paper provides a supervised classification tree-based methodology todeal withMultivalued data, ...
The framework of this work is the statistical learning theory of Vapnik, i.e. learn from the experie...
Machine learning is now in a state to get major industrial applications. The most important applicat...
<p>Classification And Regression Trees (CART) are binary decision trees, attempting to classify a pa...
106 p.Thesis (Ph.D.)--University of Illinois at Urbana-Champaign, 2006.An algorithm that dynamically...
Learning classification and regression models is one of the most important subfields of machine lear...
International audienceThis paper addresses the training of classification trees for weakly labelled ...
An application of nonparametric predictive inference for multinomial data (NPI) to classification ta...
The party package (Hothorn, Hornik, and Zeileis 2006) aims at providing a recur-sive part(y)itioning...
The framework of this paper is supervised learning using classification trees. Two types of variable...
We consider the problem of classifying an unknown observation into one of several populations using ...
An algorithm for learning decision trees for classification and prediction is described which conver...
This paper introduces the concept of the conditional impurity in the framework of tree-based models...
Linear discriminant analysis (LDA) is a part of classification methods that has been widely used in ...
The training objectives of the learning object are: 1) To define a classification tree; and 2) To ap...
This paper provides a supervised classification tree-based methodology todeal withMultivalued data, ...
The framework of this work is the statistical learning theory of Vapnik, i.e. learn from the experie...
Machine learning is now in a state to get major industrial applications. The most important applicat...
<p>Classification And Regression Trees (CART) are binary decision trees, attempting to classify a pa...
106 p.Thesis (Ph.D.)--University of Illinois at Urbana-Champaign, 2006.An algorithm that dynamically...
Learning classification and regression models is one of the most important subfields of machine lear...
International audienceThis paper addresses the training of classification trees for weakly labelled ...
An application of nonparametric predictive inference for multinomial data (NPI) to classification ta...
The party package (Hothorn, Hornik, and Zeileis 2006) aims at providing a recur-sive part(y)itioning...