Capturing Ridge Functions in High Dimensions from Point Queries

Albert Cohen, Ingrid Daubechies, Ronald DeVore, Gerard Kerkyacharian, Dominique Picard

Research output: Contribution to journalArticlepeer-review

42 Scopus citations

Abstract

Constructing a good approximation to a function of many variables suffers from the "curse of dimensionality". Namely, functions on ℝ N with smoothness of order s can in general be captured with accuracy at most O(n -s/N) using linear spaces or nonlinear manifolds of dimension n. If N is large and s is not, then n has to be chosen inordinately large for good accuracy. The large value of N often precludes reasonable numerical procedures. On the other hand, there is the common belief that real world problems in high dimensions have as their solution, functions which are more amenable to numerical recovery. This has led to the introduction of models for these functions that do not depend on smoothness alone but also involve some form of variable reduction. In these models it is assumed that, although the function depends on N variables, only a small number of them are significant. Another variant of this principle is that the function lives on a low dimensional manifold. Since the dominant variables (respectively the manifold) are unknown, this leads to new problems of how to organize point queries to capture such functions. The present paper studies where to query the values of a ridge function f(x)=g(a · x) when both a∈ℝ N and g ∈ C[0,1] are unknown. We establish estimates on how well f can be approximated using these point queries under the assumptions that g ∈ C s[0,1]. We also study the role of sparsity or compressibility of a in such query problems. © 2011 Springer Science+Business Media, LLC.
Original languageEnglish (US)
Pages (from-to)225-243
Number of pages19
JournalConstructive Approximation
Volume35
Issue number2
DOIs
StatePublished - Dec 21 2011
Externally publishedYes

Fingerprint

Dive into the research topics of 'Capturing Ridge Functions in High Dimensions from Point Queries'. Together they form a unique fingerprint.

Cite this