International audienceA multiclass learning method which minimizes a loss function is proposed. The loss function is defined by costs associated to the decision options which may include classes, subsets of classes if partial rejection is considered and all classes if total rejection is introduced. A formulation of the general problem is given, a decision rule which is based on the v-1-SVMs trained on each class is defined and a learning method is proposed. This latter optimizes all the v-1-SVM parameters and all the decision rule parameters jointly in order to minimize the loss function. To extend the search space of the v-1-SVM parameters and keep the processing time under control, the v-1-SVM regularization path is derived for each class...
International audienceIn real applications of one class classification, new features may be added du...
The objective of this study is to minimize the classification cost using Support Vector Machines (SV...
International audienceThis paper introduces a general multi-class approach to weakly supervised clas...
International audienceA multiclass algorithm based on nu-1-SVM which minimizes a loss function is in...
Many machine learning applications require classifiers that minimize an asymmetric loss function rat...
Many machine learning applications require classifiers that minimize an asymmetric loss function ra...
International audienceA procedure to select a supervised rule for multiclass problem from a labeled ...
International audienceThe problem of defining a decision rule which takes into account performance c...
International audienceWe consider the problem of binary classification where the classifier may abst...
We present a unifying framework for studying the solution of multiclass categorization prob-lems by ...
International audienceIn this paper, a new learning method is proposed to build Support Vector Machi...
One of the most active areas of research in supervised learning has been the study of methods for co...
International audienceIn this paper, we propose a multi-objective optimization framework for SVM hyp...
We propose a novel partial linearization based approach for optimizing the multi-class svm learning ...
Abstract A unified view on multi-class support vector machines (SVMs) is presented, covering most pr...
International audienceIn real applications of one class classification, new features may be added du...
The objective of this study is to minimize the classification cost using Support Vector Machines (SV...
International audienceThis paper introduces a general multi-class approach to weakly supervised clas...
International audienceA multiclass algorithm based on nu-1-SVM which minimizes a loss function is in...
Many machine learning applications require classifiers that minimize an asymmetric loss function rat...
Many machine learning applications require classifiers that minimize an asymmetric loss function ra...
International audienceA procedure to select a supervised rule for multiclass problem from a labeled ...
International audienceThe problem of defining a decision rule which takes into account performance c...
International audienceWe consider the problem of binary classification where the classifier may abst...
We present a unifying framework for studying the solution of multiclass categorization prob-lems by ...
International audienceIn this paper, a new learning method is proposed to build Support Vector Machi...
One of the most active areas of research in supervised learning has been the study of methods for co...
International audienceIn this paper, we propose a multi-objective optimization framework for SVM hyp...
We propose a novel partial linearization based approach for optimizing the multi-class svm learning ...
Abstract A unified view on multi-class support vector machines (SVMs) is presented, covering most pr...
International audienceIn real applications of one class classification, new features may be added du...
The objective of this study is to minimize the classification cost using Support Vector Machines (SV...
International audienceThis paper introduces a general multi-class approach to weakly supervised clas...