Consistency of one-class SVM and related algorithms
Vert, Régis, Vert, Jean-philippe
–Neural Information Processing Systems
We determine the asymptotic limit of the function computed by support vector machines (SVM) and related algorithms that minimize a regularized empiricalconvex loss function in the reproducing kernel Hilbert space of the Gaussian RBF kernel, in the situation where the number of examples tends to infinity, the bandwidth of the Gaussian kernel tends to 0, and the regularization parameter is held fixed.
Neural Information Processing Systems
Dec-31-2006
- Technology: