Fast high-dimensional approximation with sparse occupancy trees
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摘要
This paper is concerned with scattered data approximation in high dimensions: Given a data set X⊂Rd of N data points xi along with values yi∈Rd′, i=1,…,N, and viewing the yi as values yi=f(xi) of some unknown function f, we wish to return for any query point x∈Rd an approximation f̃(x) to y=f(x). Here the spatial dimension d should be thought of as large. We emphasize that we do not seek a representation of f̃ in terms of a fixed set of trial functions but define f̃ through recovery schemes which are primarily designed to be fast and to deal efficiently with large data sets. For this purpose we propose new methods based on what we call sparse occupancy trees and piecewise linear schemes based on simplex subdivisions.
论文关键词:41A15,41A63,High-dimensional approximation,Non-parametric regression,Non-linear approximation,Multiresolution tree
论文评审过程:Received 7 April 2010, Revised 17 September 2010, Available online 20 October 2010.
论文官网地址:https://doi.org/10.1016/j.cam.2010.10.005