Robust unsupervised feature selection

Pages: 1621 - 1627
Published: Aug 3, 2013
Abstract
A new unsupervised feature selection method, i.e., Robust Unsupervised Feature Selection (RUFS), is proposed. Unlike traditional unsupervised feature selection methods, pseudo cluster labels are learned via local learning regularized robust nonnegative matrix factorization. During the label learning process, feature selection is performed simultaneously by robust joint l2,1 norms minimization. Since RUFS utilizes l2,1 norm minimization on...
Paper Details
Title
Robust unsupervised feature selection
Published Date
Aug 3, 2013
Pages
1621 - 1627
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