Supervised Dimension Reduction of Intrinsically Low-Dimensional Data

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 m...

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Veröffentlicht in:Neural computation 2002-01, Vol.14 (1), p.191-215
Hauptverfasser: Vlassis, Nikos, Motomura, Yoichi, Kröse, Ben
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Sprache:eng
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Zusammenfassung: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.
ISSN:0899-7667
1530-888X
DOI:10.1162/089976602753284491