Comparison of graph-based methods for non-linear dimensionality reduction
by Rashmi Gupta; Rajiv Kapoor
International Journal of Signal and Imaging Systems Engineering (IJSISE), Vol. 5, No. 2, 2012

Abstract: In this paper, four broadly representative graph-based techniques for manifold learning namely Isomap, Maximum Variance Unfolding (MVU), locally linear embedding and Laplacian eigenmaps have been reviewed and compared for non-linear dimensionality reduction. These methods begin by constructing a sparse graph in which the nodes represent input patterns and the edges represent neighbourhood relations. From these graphs, matrices can be constructed whose spectral decompositions reveal the low dimensional structure of the submanifold. All the four techniques are implemented on Swiss roll, helix, twin peak and broken Swiss roll dataset.

Online publication date: Wed, 31-Dec-2014

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