Multiview point cloud kernels for semisupervised learning [Lecture Notes]


Autoria(s): Rosenberg, David; Sindhwani, Vikas; Bartlett, Peter L.; Niyogi, Partha
Data(s)

04/09/2009

Resumo

In semisupervised learning (SSL), a predictive model is learn from a collection of labeled data and a typically much larger collection of unlabeled data. These paper presented a framework called multi-view point cloud regularization (MVPCR), 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), manifold regularization (MR), and graph-based SSL. An accompanying theorem shows how to reduce any MVPCR problem to standard supervised learning with a new multi-view kernel.

Formato

application/pdf

Identificador

http://eprints.qut.edu.au/43981/

Publicador

IEEE

Relação

http://eprints.qut.edu.au/43981/1/43981.pdf

DOI:10.1109/MSP.2009.933383

Rosenberg, David, Sindhwani, Vikas, Bartlett, Peter L., & Niyogi, Partha (2009) Multiview point cloud kernels for semisupervised learning [Lecture Notes]. IEEE Signal Processing Magazine, 26(5), 145-150 .

Direitos

Copyright 2009 IEEE

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Fonte

Faculty of Science and Technology; Mathematical Sciences

Palavras-Chave #090600 ELECTRICAL AND ELECTRONIC ENGINEERING #091300 MECHANICAL ENGINEERING #Approximation error #Semisupervised learning #Kernel #Signal processing algorithms #Support vector machines #Hilbert space #Estimation error #Clouds #Convergence
Tipo

Journal Article