|
|
||||||||
Letter |
vlassis{at}science.uva.nl, RWCP, Autonomous Learning Functions SNN, University of Amsterdam, The Netherlands
motomura{at}etl.go.jp, Electrotechnical Laboratory, Tsukuba Ibaraki 305-8568, Umezono 1-1-4, Japan
krose{at}science.uva.nl, RWCP, Autonomous Learning Functions SNN, University of Amsterdam, The Netherlands
High-dimensional data generated by a system with limited degrees of freedom are often constrained in low-dimensional manifolds in the original space. In this article, we investigate dimension-reduction methods for such intrinsically low-dimensional data through linear projections that preserve the manifold structure of the data. For intrinsically one-dimensional data, this implies projecting to a curve on the plane with as few intersections as possible. We are proposing a supervised projection pursuit method that can be regarded as an extension of the single-index model for nonparametric regression. We show results from a toy and two robotic applications.
This article has been cited by other articles:
![]() |
S. Vijayakumar, A. D'Souza, and S. Schaal Incremental Online Learning in High Dimensions Neural Comput., December 1, 2005; 17(12): 2602 - 2634. [Abstract] [Full Text] [PDF] |
||||
| HOME | HELP | FEEDBACK | SUBSCRIPTIONS | ARCHIVE | SEARCH | TABLE OF CONTENTS |
| J COGNITIVE NEUROSCIENCE | NEURAL COMPUTATION | MIT PRESS JOURNALS |