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Function values are enough for $L_2$-approximation

David Krieg, Mario Ullrich

Abstract

We study the $L_2$-approximation of functions from a Hilbert space and compare the sampling numbers with the approximation numbers. The sampling number $e_n$ is the minimal worst case error that can be achieved with $n$ function values, whereas the approximation number $a_n$ is the minimal worst case error that can be achieved with $n$ pieces of arbitrary linear information (like derivatives or Fourier coefficients). We show that \[ e_n \,\lesssim\, \sqrt{\frac{1}{k_n} \sum_{j\geq k_n} a_j^2}, \] where $k_n \asymp n/\log(n)$. This proves that the sampling numbers decay with the same polynomial rate as the approximation numbers and therefore that function values are basically as powerful as arbitrary linear information if the approximation numbers are square-summable. Our result applies, in particular, to Sobolev spaces $H^s_{\rm mix}(\mathbb{T}^d)$ with dominating mixed smoothness $s>1/2$ and we obtain \[ e_n \,\lesssim\, n^{-s} \log^{sd}(n). \] For $d>2s+1$, this improves upon all previous bounds and disproves the prevalent conjecture that Smolyak's (sparse grid) algorithm is optimal.

Function values are enough for $L_2$-approximation

Abstract

We study the -approximation of functions from a Hilbert space and compare the sampling numbers with the approximation numbers. The sampling number is the minimal worst case error that can be achieved with function values, whereas the approximation number is the minimal worst case error that can be achieved with pieces of arbitrary linear information (like derivatives or Fourier coefficients). We show that where . This proves that the sampling numbers decay with the same polynomial rate as the approximation numbers and therefore that function values are basically as powerful as arbitrary linear information if the approximation numbers are square-summable. Our result applies, in particular, to Sobolev spaces with dominating mixed smoothness and we obtain For , this improves upon all previous bounds and disproves the prevalent conjecture that Smolyak's (sparse grid) algorithm is optimal.

Paper Structure

This paper contains 1 section, 5 theorems, 48 equations.

Table of Contents

  1. The Proof

Key Result

Theorem 1

There are absolute constants $C,c>0$ and a sequence of natural numbers $(k_n)$ with $k_n\ge c n/\log(n+1)$ such that the following holds. For any $n\in\mathbb{N}$, any measure space $(D,\mathcal{A},\mu)$ and any reproducing kernel Hilbert space $H$ of real-valued functions on $D$ that is embedded in

Theorems & Definitions (11)

  • Theorem 1
  • Corollary 2
  • Corollary 3
  • Remark 1
  • Remark 2
  • Remark 3
  • Lemma 1
  • Proposition 1
  • proof : Proof of Proposition 1
  • proof : Proof of Claim 1
  • ...and 1 more