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On Efficient Algorithms For Computing Nearbest Polynomial Approximations To Highdimensional Hilbertvalued Functions From Limited Samples Ben Adcock Simone Brugiapaglia Nick Dexter Sebastian Moraga

  • SKU: BELL-57085780
On Efficient Algorithms For Computing Nearbest Polynomial Approximations To Highdimensional Hilbertvalued Functions From Limited Samples Ben Adcock Simone Brugiapaglia Nick Dexter Sebastian Moraga
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On Efficient Algorithms For Computing Nearbest Polynomial Approximations To Highdimensional Hilbertvalued Functions From Limited Samples Ben Adcock Simone Brugiapaglia Nick Dexter Sebastian Moraga instant download after payment.

Publisher: EMS
File Extension: PDF
File size: 1.58 MB
Pages: 114
Author: Ben Adcock & Simone Brugiapaglia & Nick Dexter & Sebastian Moraga
ISBN: 9783985470709, 3985470707
Language: English
Year: 2024
Volume: 13

Product desciption

On Efficient Algorithms For Computing Nearbest Polynomial Approximations To Highdimensional Hilbertvalued Functions From Limited Samples Ben Adcock Simone Brugiapaglia Nick Dexter Sebastian Moraga by Ben Adcock & Simone Brugiapaglia & Nick Dexter & Sebastian Moraga 9783985470709, 3985470707 instant download after payment.

Sparse polynomial approximation is an important tool for approximating high-dimensional functions from limited samples – a task commonly arising in computational science and engineering. Yet, it lacks a complete theory. There is a well-developed theory of best s-term polynomial approximation, which asserts exponential or algebraic rates of convergence for holomorphic functions. There are also increasingly mature methods such as (weighted) ℓ1-minimization for practically computing such approximations. However, whether these methods achieve the rates of the best s-term approximation is not fully understood. Moreover, these methods are not algorithms per se, since they involve exact minimizers of nonlinear optimization problems. This paper closes these gaps by affirmatively answering the following question: are there robust, efficient algorithms for computing sparse polynomial approximations to finite- or infinite-dimensional, holomorphic and Hilbert-valued functions from limited samples that achieve the same rates as the best s-term approximation? We do so by introducing algorithms with exponential or algebraic convergence rates that are also robust to sampling, algorithmic and physical discretization errors. Our results involve several developments of existing techniques, including a new restarted primal-dual iteration for solving weighted ℓ1-minimization problems in Hilbert spaces. Our theory is supplemented by numerical experiments demonstrating the efficacy of these algorithms.

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