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inria-00321053, version 2

Semi-supervised dimensionality reduction using pairwise equivalence constraints

Hakan Cevikalp 1, Jakob Verbeek () a1, Frederic Jurie () b1, Alexander Klaser 1

3rd International Conference on Computer Vision Theory and Applications (VISAPP '08) (2008) 489--496

Abstract: To deal with the problem of insufficient labeled data, usually side information -- given in the form of pairwise equivalence constraints between points -- is used to discover groups within data. However, existing methods using side information typically fail in cases with high-dimensional spaces. In this paper, we address the problem of learning from side information for high-dimensional data. To this end, we propose a semi-supervised dimensionality reduction scheme that incorporates pairwise equivalence constraints for finding a better embedding space, which improves the performance of subsequent clustering and classification phases. Our method builds on the assumption that points in a sufficiently small neighborhood tend to have the same label. Equivalence constraints are employed to modify the neighborhoods and to increase the separability of different classes. Experimental results on high-dimensional image data sets show that integrating side information into the dimensionality reduction improves the clustering and classification performance.

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  • inria-00321053, version 2
  • oai:hal.inria.fr:inria-00321053
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  • Submitted on: Monday, 11 April 2011 11:42:51
  • Updated on: Friday, 15 April 2011 15:24:35
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