Sparsity of SVMs that use the epsilon-insensitive loss
Steinwart, Ingo, Christmann, Andreas
–Neural Information Processing Systems
In this paper lower and upper bounds for the number of support vectors are derived for support vector machines (SVMs) based on the epsilon-insensitive loss function. It turns out that these bounds are asymptotically tight under mild assumptions on the data generating distribution. Finally, we briefly discuss a trade-off in epsilon between sparsity and accuracy if the SVM is used to estimate the conditional median.
Neural Information Processing Systems
Dec-31-2009