International audienceLet $F$ be a compact set of a Banach space $\mathcal{X}$. This paper analyses the ``Generalized Empirical Interpolation Method'' (GEIM) which, given a function $f\in F$, builds an interpolant $\mathcal{J}_n[f]$ in an $n$-dimensional subspace $X_n \subset \mathcal{X}$ with the knowledge of $n$ outputs $(\sigma_i(f))_{i=1}^n$, where $\sigma_i\in \mathcal{X}'$ and $\mathcal{X}'$ is the dual space of $\mathcal{X}$. The space $X_n$ is built with a greedy algorithm that is \textit{adapted} to $F$ in the sense that it is generated by elements of $F$ itself. The algorithm also selects the linear functionals $(\sigma_i)_{i=1}^n$ from a dictionary $\Sigma\subset \mathcal{X}'$.In this paper, we study the interpolation error $\max...
AbstractInterpolation methods are introduced which have specific application in the function space s...
AbstractWe consider interpolation of univariate functions on arbitrary sets of nodes by Gaussian rad...
Sufficient conditions are provided for establishing equivalence between best approximation error and...
Let F be a compact set of a Banach space X. This paper analyses the ``Generalized Empirical Interpol...
Abstract. The Generalized Empirical Interpolation Method (GEIM, [12]) is an extension first presente...
International audienceIn an effort to extend the classical lagrangian interpolation tools, new inter...
Data-dependent greedy algorithms in kernel spaces are known to provide fast converging interpolants,...
International audienceIn this paper, interpolating curve or surface with linear inequality constrain...
AbstractIn the present paper we explore an approximation theoretic approach to some classical conver...
We extend the classical empirical interpolation method [1] to a weighted empirical interpolation met...
Lagrangian interpolation is a classical way to approximate general functions by finite sums of well c...
International audienceThe Generalized Empirical Interpolation Method (GEIM) is an extension first pr...
The 10th International Conference on Sampling Theory and Applications (SampTA) took place from July ...
International audienceMotivated by the development of non-intrusive methods for high dimensional par...
AbstractA theory of best approximation with interpolatory contraints from a finite-dimensional subsp...
AbstractInterpolation methods are introduced which have specific application in the function space s...
AbstractWe consider interpolation of univariate functions on arbitrary sets of nodes by Gaussian rad...
Sufficient conditions are provided for establishing equivalence between best approximation error and...
Let F be a compact set of a Banach space X. This paper analyses the ``Generalized Empirical Interpol...
Abstract. The Generalized Empirical Interpolation Method (GEIM, [12]) is an extension first presente...
International audienceIn an effort to extend the classical lagrangian interpolation tools, new inter...
Data-dependent greedy algorithms in kernel spaces are known to provide fast converging interpolants,...
International audienceIn this paper, interpolating curve or surface with linear inequality constrain...
AbstractIn the present paper we explore an approximation theoretic approach to some classical conver...
We extend the classical empirical interpolation method [1] to a weighted empirical interpolation met...
Lagrangian interpolation is a classical way to approximate general functions by finite sums of well c...
International audienceThe Generalized Empirical Interpolation Method (GEIM) is an extension first pr...
The 10th International Conference on Sampling Theory and Applications (SampTA) took place from July ...
International audienceMotivated by the development of non-intrusive methods for high dimensional par...
AbstractA theory of best approximation with interpolatory contraints from a finite-dimensional subsp...
AbstractInterpolation methods are introduced which have specific application in the function space s...
AbstractWe consider interpolation of univariate functions on arbitrary sets of nodes by Gaussian rad...
Sufficient conditions are provided for establishing equivalence between best approximation error and...