Fast semi-supervised discriminant analysis for binary classification of large data-sets

September 14, 2017 Β· Declared Dead Β· πŸ› Pattern Recognition

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Authors Joris Tavernier, Jaak Simm, Karl Meerbergen, Joerg Kurt Wegner, Hugo Ceulemans, Yves Moreau arXiv ID 1709.04794 Category cs.AI: Artificial Intelligence Cross-listed cs.PF, math.NA Citations 13 Venue Pattern Recognition Last Checked 4 months ago
Abstract
High-dimensional data requires scalable algorithms. We propose and analyze three scalable and related algorithms for semi-supervised discriminant analysis (SDA). These methods are based on Krylov subspace methods which exploit the data sparsity and the shift-invariance of Krylov subspaces. In addition, the problem definition was improved by adding centralization to the semi-supervised setting. The proposed methods are evaluated on a industry-scale data set from a pharmaceutical company to predict compound activity on target proteins. The results show that SDA achieves good predictive performance and our methods only require a few seconds, significantly improving computation time on previous state of the art.
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