Title :
Scalable semidefinite manifold learning
Author :
Vasiloglou, Nikolaos ; Gray, Alexander G. ; Anderson, David V.
Author_Institution :
Georgia Inst. of Technol., Atlanta, GA
Abstract :
Maximum variance unfolding (MVU) is among the state of the art manifold learning (ML) algorithms and experimentally proven to be the best method to unfold a manifold to its intrinsic dimension. Unfortunately it doesnpsilat scale for more than a few hundred points. A non convex formulation of MVU made it possible to scale up to a few thousand points with the risk of getting trapped in local minima. In this paper we demonstrate techniques based on the dual-tree algorithm and L-BFGS that allow MVU to scale up to 100,000 points. We also present a new variant called maximum furthest neighbor unfolding (MFNU) which performs even better than MVU in terms of avoiding local minima.
Keywords :
learning (artificial intelligence); trees (mathematics); dual-tree algorithm; maximum furthest neighbor unfolding; maximum variance unfolding; nonconvex formulation; scalable semidefinite manifold learning; Computer aided software engineering; Learning systems; Upper bound;
Conference_Titel :
Machine Learning for Signal Processing, 2008. MLSP 2008. IEEE Workshop on
Conference_Location :
Cancun
Print_ISBN :
978-1-4244-2375-0
Electronic_ISBN :
1551-2541
DOI :
10.1109/MLSP.2008.4685508