Dimensionality reduction by using transductive learning and binary hierarchical trees

In this study, transductive learning and binary hierarchical decision trees are used together to find discriminative embedding (projection) directions. The projection directions returned by the proposed methodology are used for dimensionality reduction and the accuracy of nearest neighbor classification is significantly improved. We choose random classes and samples to create multiple hierarchical trees, and transductive support vector machine (TSVM) classifier is used to separate the data samples at each node of the binary hierarchical trees. The normals of the separating hyperplanes returned by the TSVM are used for dimensionality reduction. Different strategies are used to combine the projection directions coming from different hierarchical trees. In all experiments significant improvement are obtained over the nearest neighbor using full dimensionality of the input space. Since dimensionality is reduced significantly, speed of classifier has also been improved.

[1]  Thorsten Joachims,et al.  Transductive Inference for Text Classification using Support Vector Machines , 1999, ICML.

[2]  Florent Perronnin,et al.  Fisher Kernels on Visual Vocabularies for Image Categorization , 2007, 2007 IEEE Conference on Computer Vision and Pattern Recognition.

[3]  David Casasent,et al.  A hierarchical classifier using new support vector machines for automatic target recognition , 2005, Neural Networks.

[4]  Jason Weston,et al.  Large Scale Transductive SVMs , 2006, J. Mach. Learn. Res..

[5]  G. Griffin,et al.  Caltech-256 Object Category Dataset , 2007 .

[6]  Hakan Cevikalp,et al.  New clustering algorithms for the support vector machine based hierarchical classification , 2010, Pattern Recognit. Lett..

[7]  A. Rahimi,et al.  Clustering with Normalized Cuts is Clustering with a Hyperplane , 2004 .

[8]  Jitendra Malik,et al.  Normalized cuts and image segmentation , 1997, Proceedings of IEEE Computer Society Conference on Computer Vision and Pattern Recognition.

[9]  Ayhan Demiriz,et al.  Semi-Supervised Support Vector Machines , 1998, NIPS.