We propose two new algorithms to improve greedy sampling of high-dimensional functions. While the techniques have a substantial degree of generality, we frame the discussion in the context of methods for empirical interpolation and the development of reduced basis techniques for high-dimensional parametrized functions. The first algorithm, based on a saturation assumption of the error in the greedy algorithm, is shown to result in a significant reduction of the workload over the standard greedy algorithm. In a further improved approach, this is combined with an algorithm in which the train set for the greedy approach is adaptively sparsified and enriched. A safety check step is added at the end of the algorithm to certify the quality of the...
Reduced bases have been introduced for the approximation of parametrized PDEs in applications where ...
In this note we present some quantitative results concerning the convergence proofs of the Greedy Al...
For the solution of large sparse linear systems arising from interpolation problems using compactly ...
Abstract. We propose two new algorithms to improve greedy sampling of high-dimensional func-tions. W...
We propose two new and enhanced algorithms for greedy sampling of high- dimensional functions. While...
We consider the reduced basis generation in the offline stage. As an alternative for standard Greedy...
Kernel based methods provide a way to reconstruct potentially high-dimensional functions from meshfr...
In this work we extend some ideas about greedy algorithms, which are well-established tools for, e.g...
Reduced bases have been introduced for the approximation of parametrized PDEs in applications where ...
In this work we extend some ideas about greedy algorithms, which are well-established tools for, e.g...
In this work we extend some ideas about greedy algorithms, which are well-established tools for, e.g...
In this work we extend some ideas about greedy algorithms, which are well-established tools for, e.g...
Reduced bases have been introduced for the approximation of parametrized PDEs in applications where ...
Reduced bases have been introduced for the approximation of parametrized PDEs in applications where ...
Reduced bases have been introduced for the approximation of parametrized PDEs in applications where ...
Reduced bases have been introduced for the approximation of parametrized PDEs in applications where ...
In this note we present some quantitative results concerning the convergence proofs of the Greedy Al...
For the solution of large sparse linear systems arising from interpolation problems using compactly ...
Abstract. We propose two new algorithms to improve greedy sampling of high-dimensional func-tions. W...
We propose two new and enhanced algorithms for greedy sampling of high- dimensional functions. While...
We consider the reduced basis generation in the offline stage. As an alternative for standard Greedy...
Kernel based methods provide a way to reconstruct potentially high-dimensional functions from meshfr...
In this work we extend some ideas about greedy algorithms, which are well-established tools for, e.g...
Reduced bases have been introduced for the approximation of parametrized PDEs in applications where ...
In this work we extend some ideas about greedy algorithms, which are well-established tools for, e.g...
In this work we extend some ideas about greedy algorithms, which are well-established tools for, e.g...
In this work we extend some ideas about greedy algorithms, which are well-established tools for, e.g...
Reduced bases have been introduced for the approximation of parametrized PDEs in applications where ...
Reduced bases have been introduced for the approximation of parametrized PDEs in applications where ...
Reduced bases have been introduced for the approximation of parametrized PDEs in applications where ...
Reduced bases have been introduced for the approximation of parametrized PDEs in applications where ...
In this note we present some quantitative results concerning the convergence proofs of the Greedy Al...
For the solution of large sparse linear systems arising from interpolation problems using compactly ...