Online Manifold Regularization by Dual Ascending Procedure

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Boliang Sun; Guohui Li; Li Jia; Hui Zhang;

We propose a novel online manifold regularization framework based on the notion of duality in constrained optimization. The Fenchel conjugate of hinge functions is a key to transfer manifold regularization from offline to online in this paper. Our algorithms are derived... View more
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