Leo Liberti, James Ostrowski
Journal of Global Optimization
In semisupervised learning (SSL), we learn a predictive model from a collection of labeled data and a typically much larger collection of unlabeled data. These lecture notes present a framework called multiview point cloud regularization (MVPCR) [5], which unifies and generalizes several semisupervised kernel methods that are based on data-dependent regularization in reproducing kernel Hilbert spaces (RKHSs). Special cases of MVPCR include coregularized least squares (CoRLS) [7], [3], [6], manifold regularization (MR) [1], [8], [4], and graph-based SSL. An accompanying theorem shows how to reduce any MVPCR problem to standard supervised learning with a new multiview kernel. © 2009 IEEE.
Leo Liberti, James Ostrowski
Journal of Global Optimization
Guo-Jun Qi, Charu Aggarwal, et al.
IEEE TPAMI
F. Odeh, I. Tadjbakhsh
Archive for Rational Mechanics and Analysis
I.K. Pour, D.J. Krajnovich, et al.
SPIE Optical Materials for High Average Power Lasers 1992