Extending error bounds for radial basis function interpolation to measuring the error in higher order Sobolev norms
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Publication:6622394
DOI10.1090/mcom/3960zbMath1548.41009MaRDI QIDQ6622394
Thomas Hangelbroek, Christian Rieger
Publication date: 22 October 2024
Published in: Mathematics of Computation (Search for Journal in Brave)
Inequalities in approximation (Bernstein, Jackson, Nikol'ski?-type inequalities) (41A17) Rate of convergence, degree of approximation (41A25) Numerical radial basis function approximation (65D12)
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