Sciweavers

ICML
2010
IEEE

The Elastic Embedding Algorithm for Dimensionality Reduction

13 years 5 months ago
The Elastic Embedding Algorithm for Dimensionality Reduction
We propose a new dimensionality reduction method, the elastic embedding (EE), that optimises an intuitive, nonlinear objective function of the low-dimensional coordinates of the data. The method reveals a fundamental relation betwen a spectral method, Laplacian eigenmaps, and a nonlinear method, stochastic neighbour embedding; and shows that EE can be seen as learning both the coordinates and the affinities between data points. We give a homotopy method to train EE, characterise the critical value of the homotopy parameter, and study the method's behaviour. For a fixed homotopy parameter, we give a globally convergent iterative algorithm that is very effective and requires no user parameters. Finally, we give an extension to outof-sample points. In standard datasets, EE obtains results as good or better than those of SNE, but more efficiently and robustly.
Miguel Á. Carreira-Perpiñán
Added 09 Nov 2010
Updated 09 Nov 2010
Type Conference
Year 2010
Where ICML
Authors Miguel Á. Carreira-Perpiñán
Comments (0)