The decision functions constructed by support vector machines (SVM’s) usually depend only on a subset of the training set—the so-called support vectors. We derive asymptotically sharp lower and upper bounds on the number of support vectors for several standard types of SVM’s. In particular, we show for the Gaussian RBF kernel that the fraction of support vectors tends to twice the Bayes risk for the L1-SVM, to the probability of noise for the L2-SVM, and to 1 for the LS-SVM.
International audienceThis article proposes a performance analysis of kernel least squares support v...
International audienceThis article proposes a performance analysis of kernel least squares support v...
We derive new bounds for the generalization error of kernel machines, such as support vector machine...
The decision functions constructed by support vector machines (SVM's) usually depend only on a...
Support vector machines (SVM's) construct decision functions that are linear combinations of k...
In this paper lower and upper bounds for the number of support vectors are derived for support vecto...
Abstract. One of the nice properties of kernel classifiers such as SVMs is that they often produce s...
We determine the asymptotic limit of the function computed by support vector machines (SVM) and rela...
One of the nice properties of kernel classifiers such as SVMs is that they often produce sparse solu...
The support vector machine methodology is a rapidly growing area of research in machine learning. A ...
We derive new bounds for the generalization error of feature space machines, such as support vector ...
The support vector machine (SVM) algorithm is well known to the computer learning community for its ...
We determine the asymptotically optimal choice of the parameter for classifiers of ν-support vector ...
International audienceThis article proposes a performance analysis of kernel least squares support v...
The support vector machine has been successful in a variety of applications. Also on the theoretical...
International audienceThis article proposes a performance analysis of kernel least squares support v...
International audienceThis article proposes a performance analysis of kernel least squares support v...
We derive new bounds for the generalization error of kernel machines, such as support vector machine...
The decision functions constructed by support vector machines (SVM's) usually depend only on a...
Support vector machines (SVM's) construct decision functions that are linear combinations of k...
In this paper lower and upper bounds for the number of support vectors are derived for support vecto...
Abstract. One of the nice properties of kernel classifiers such as SVMs is that they often produce s...
We determine the asymptotic limit of the function computed by support vector machines (SVM) and rela...
One of the nice properties of kernel classifiers such as SVMs is that they often produce sparse solu...
The support vector machine methodology is a rapidly growing area of research in machine learning. A ...
We derive new bounds for the generalization error of feature space machines, such as support vector ...
The support vector machine (SVM) algorithm is well known to the computer learning community for its ...
We determine the asymptotically optimal choice of the parameter for classifiers of ν-support vector ...
International audienceThis article proposes a performance analysis of kernel least squares support v...
The support vector machine has been successful in a variety of applications. Also on the theoretical...
International audienceThis article proposes a performance analysis of kernel least squares support v...
International audienceThis article proposes a performance analysis of kernel least squares support v...
We derive new bounds for the generalization error of kernel machines, such as support vector machine...