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Laplacian Support Vector Analysis for Subspace Discriminative Learning
2014
2014 22nd International Conference on Pattern Recognition
In this paper we propose a novel dimensionality reduction method that is based on successive Laplacian SVM projections in orthogonal deflated subspaces. The proposed method, called Laplacian Support Vector Analysis, produces projection vectors, which capture the discriminant information that lies in the subspace orthogonal to the standard Laplacian SVMs. We show that the optimal vectors on these deflated subspaces can be computed by successively training a standard SVM with specially designed
doi:10.1109/icpr.2014.285
dblp:conf/icpr/ArvanitopoulosBT14
fatcat:wehioetc7bfrbesl4fpvpnazdy