Publikationsansicht

Diffeomorphic Dimensionality Reduction (2009)

Abstract
This paper introduces a new approach to constructing meaningful lower dimensional representations of sets of data points. We argue that constraining the mapping between the high and low dimensional spaces to be a diffeomorphism is a natural way of ensuring that pairwise distances are approximately preserved. Accordingly we develop an algorithm which diffeomorphically maps the data near to a lower dimensional subspace and then projects onto that subspace. The problem of solving for the mapping is transformed into one of solving for an Eulerian flow field which we compute using ideas from kernel methods. We demonstrate the efficacy of our approach on various real world data sets.

Details der Publikation
Download http://eprints.pascal-network.org/archive/00004352/
Archiv PASCAL EPrints (United Kingdom)
Keywords Computational, Information-Theoretic Learning with Statistics, Learning/Statistics & Optimisation, Brain Computer Interfaces, Theory & Algorithms
Typ Conference or Workshop Item, PeerReviewed
Verknüpfungen http://eprints.pascal-network.org/archive/00004352/01/NIPS2008-Walder_5394[0].pdf