Download PDFOpen PDF in browserSemi-supervised Feature Selection with Adaptive Discriminant AnalysisEasyChair Preprint 7402 pages•Date: January 19, 2019AbstractIn this paper, we propose a novel Adaptive Discriminant Analysis for semi-supervised feature selection, namely SADA. Instead of computing fixed similarities before performing feature selection, SADA simultaneously learns an adaptive similarity matrix S and a projection matrix W with an iterative method. In each iteration, S is computed from the projected distance with the learned W and W is computed with the learned S. Therefore, SADA can learn better projection matrix W by weakening the effect of noise features with the adaptive similarity matrix. Experimental results on 4 data sets show the superiority of SADA compared to 5 supervised feature selection methods. Keyphrases: Adaptive Discriminant Analysis, Learning Systems, feature selection, robustness, semi-supervised feature selection, sparse matrices
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