SOTAVerified

The Impact of Unlabeled Patterns in Rademacher Complexity Theory for Kernel Classifiers

2011-12-01NeurIPS 2011Unverified0· sign in to hype

Luca Oneto, Davide Anguita, Alessandro Ghio, Sandro Ridella

Unverified — Be the first to reproduce this paper.

Reproduce

Abstract

We derive here new generalization bounds, based on Rademacher Complexity theory, for model selection and error estimation of linear (kernel) classifiers, which exploit the availability of unlabeled samples. In particular, two results are obtained: the first one shows that, using the unlabeled samples, the confidence term of the conventional bound can be reduced by a factor of three; the second one shows that the unlabeled samples can be used to obtain much tighter bounds, by building localized versions of the hypothesis class containing the optimal classifier.

Tasks

Reproductions