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      Multivariate approximation in downward closed polynomial spaces

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          Abstract

          The task of approximating a function of d variables from its evaluations at a given number of points is ubiquitous in numerical analysis and engineering applications. When d is large, this task is challenged by the so-called curse of dimensionality. As a typical example, standard polynomial spaces, such as those of total degree type, are often uneffective to reach a prescribed accuracy unless a prohibitive number of evaluations is invested. In recent years it has been shown that, for certain relevant applications, there are substantial advantages in using certain sparse polynomial spaces having anisotropic features with respect to the different variables. These applications include in particular the numerical approximation of high-dimensional parametric and stochastic partial differential equations. We start by surveying several results in this direction, with an emphasis on the numerical algorithms that are available for the construction of the approximation, in particular through interpolation or discrete least-squares fitting. All such algorithms rely on the assumption that the set of multi-indices associated with the polynomial space is downward closed. In the present paper we introduce some tools for the study of approximation in multivariate spaces under this assumption, and use them in the derivation of error bounds, sometimes independent of the dimension d, and in the development of adaptive strategies.

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          Analysis of Discrete \(L^2\) L 2 Projection on Polynomial Spaces with Random Evaluations

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            Multivariate Markov-type and Nikolskii-type inequalities for polynomials associated with downward closed multi-index sets

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              Author and article information

              Journal
              2016-12-20
              Article
              1612.06690
              8a1b1fd7-0478-4b45-a8ce-1fb1eb34f5eb

              http://arxiv.org/licenses/nonexclusive-distrib/1.0/

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              math.NA math.AP

              Analysis,Numerical & Computational mathematics
              Analysis, Numerical & Computational mathematics

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