Partial-Hessian Strategies for Fast Learning of Nonlinear Embeddings
Vladymyrov, Max, Carreira-Perpinan, Miguel
Stochastic neighbor embedding (SNE) and related nonlinear manifold learning algorithms achieve high-quality low-dimensional representations of similarity data, but are notoriously slow to train. We propose a generic formulation of embedding algorithms that includes SNE and other existing algorithms, and study their relation with spectral methods and graph Laplacians. This allows us to define several partial-Hessian optimization strategies, characterize their global and local convergence, and evaluate them empirically. We achieve up to two orders of magnitude speedup over existing training methods with a strategy (which we call the spectral direction) that adds nearly no overhead to the gradient and yet is simple, scalable and applicable to several existing and future embedding algorithms.
Jun-18-2012
- Country:
- Europe > United Kingdom
- Scotland (0.14)
- North America > United States
- California (0.14)
- Europe > United Kingdom
- Genre:
- Research Report (0.50)
- Technology: