International audienceThe foundational concept of Max-Margin in machine learning is ill-posed for output spaces with more than two labels such as in structured prediction. In this paper, we show that the Max-Margin loss can only be consistent to the classification task under highly restrictive assumptions on the discrete loss measuring the error between outputs. These conditions are satisfied by distances defined in tree graphs, for which we prove consistency, thus being the first losses shown to be consistent for Max-Margin beyond the binary setting. We finally address these limitations by correcting the concept of Max-Margin and introducing the Restricted-Max-Margin, where the maximization of the lossaugmented scores is maintained, but pe...
Motivated by the success of large margin methods in supervised learning, maximum margin clustering (...
Motivated by the success of large margin methods in supervised learning, maximum margin clustering (...
In this paper, we investigate the problem of exploiting global information to improve the performanc...
Margin maximizing properties play an important role in the analysis of classification models, such ...
In many classification procedures, the classification function is obtained (or trained) by minimizi...
Generalization bounds depending on the margin of a classifier are a relatively recent development. T...
A learning algorithm referred to as Maximum Margin (MM) is proposed for considering the class-imbala...
A number of results have bounded generalization of a classier in terms of its margin on the training...
Typical bounds on generalization of Support Vector Machines are based on the minimum distance betwee...
A number of results have bounded generalization error of a classifier in terms of its margin on the ...
Logistic models are commonly used for binary classification tasks. The success of such models has of...
Anumber of results have bounded generalization of a classi er in terms of its margin on the training...
In typical classification tasks, we seek a function which assigns a label to a single object. Kerne...
A number of results have bounded generalization of a classier in terms of its margin on the training...
Regularized Classifiers such as SVM or RLS are among the most used and successful classifiers in mac...
Motivated by the success of large margin methods in supervised learning, maximum margin clustering (...
Motivated by the success of large margin methods in supervised learning, maximum margin clustering (...
In this paper, we investigate the problem of exploiting global information to improve the performanc...
Margin maximizing properties play an important role in the analysis of classification models, such ...
In many classification procedures, the classification function is obtained (or trained) by minimizi...
Generalization bounds depending on the margin of a classifier are a relatively recent development. T...
A learning algorithm referred to as Maximum Margin (MM) is proposed for considering the class-imbala...
A number of results have bounded generalization of a classier in terms of its margin on the training...
Typical bounds on generalization of Support Vector Machines are based on the minimum distance betwee...
A number of results have bounded generalization error of a classifier in terms of its margin on the ...
Logistic models are commonly used for binary classification tasks. The success of such models has of...
Anumber of results have bounded generalization of a classi er in terms of its margin on the training...
In typical classification tasks, we seek a function which assigns a label to a single object. Kerne...
A number of results have bounded generalization of a classier in terms of its margin on the training...
Regularized Classifiers such as SVM or RLS are among the most used and successful classifiers in mac...
Motivated by the success of large margin methods in supervised learning, maximum margin clustering (...
Motivated by the success of large margin methods in supervised learning, maximum margin clustering (...
In this paper, we investigate the problem of exploiting global information to improve the performanc...