We present a bound on the generalisation error of linear classifiers in terms of a refined margin quantity on the training set. The result is obtained in a PAC- Bayesian framework and is based on geometrical arguments in the space of linear classifiers. The new bound constitutes an exponential improvement of the so far tightest margin bound by Shawe-Taylor et al. [8] and scales logarithmically in the inverse margin. Even in the case of less training examples than input dimensions sufficiently large margins lead to non-trivial bound values and- for maximum margins- to a vanishing com-plexity term. Furthermore, the classical margin is too coarse a measure for the essential quantity that controls the generalisation error: the volume ratio betw...
Anumber of results have bounded generalization of a classi er in terms of its margin on the training...
This paper presents an approach to build Sparse Large Margin Classifiers (SLMC) by adding one more c...
We present distribution independent bounds on the generalization misclassification performance of a ...
Typical bounds on generalization of Support Vector Machines are based on the minimum distance betwee...
Margin is one of the most important concepts in machine learning. Previous mar-gin bounds, both for ...
Margin is one of the most important concepts in machine learning. Previous margin bounds, both for S...
Generalization bounds depending on the margin of a classifier are a relatively recent development. T...
A number of results have bounded generalization error of a classifier in terms of its margin on the ...
A number of results have bounded generalization of a classier in terms of its margin on the training...
International audienceWe introduce a large margin linear binary classification framework that approx...
The concept of large margins is a unifying principle for the analysis of many different approaches t...
In this paper we propose a new learning algorithm for kernel classifiers. Former approaches like Qua...
The concept of large margins is a unifying principle for the analysis of many different approaches t...
Existing proofs of Vapnik's result on the VC dimension of bounded margin classifiers rely on th...
A number of results have bounded generalization of a classier in terms of its margin on the training...
Anumber of results have bounded generalization of a classi er in terms of its margin on the training...
This paper presents an approach to build Sparse Large Margin Classifiers (SLMC) by adding one more c...
We present distribution independent bounds on the generalization misclassification performance of a ...
Typical bounds on generalization of Support Vector Machines are based on the minimum distance betwee...
Margin is one of the most important concepts in machine learning. Previous mar-gin bounds, both for ...
Margin is one of the most important concepts in machine learning. Previous margin bounds, both for S...
Generalization bounds depending on the margin of a classifier are a relatively recent development. T...
A number of results have bounded generalization error of a classifier in terms of its margin on the ...
A number of results have bounded generalization of a classier in terms of its margin on the training...
International audienceWe introduce a large margin linear binary classification framework that approx...
The concept of large margins is a unifying principle for the analysis of many different approaches t...
In this paper we propose a new learning algorithm for kernel classifiers. Former approaches like Qua...
The concept of large margins is a unifying principle for the analysis of many different approaches t...
Existing proofs of Vapnik's result on the VC dimension of bounded margin classifiers rely on th...
A number of results have bounded generalization of a classier in terms of its margin on the training...
Anumber of results have bounded generalization of a classi er in terms of its margin on the training...
This paper presents an approach to build Sparse Large Margin Classifiers (SLMC) by adding one more c...
We present distribution independent bounds on the generalization misclassification performance of a ...