Sparse tensor product wavelet approximation of singular functions
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| Publication date | 2010 |
| Journal | SIAM Journal on Mathematical Analysis |
| Volume | Issue number | 42 | 5 |
| Pages (from-to) | 2203-2228 |
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| Abstract |
On product domains, sparse-grid approximation yields optimal, dimension-independent convergence rates when the function that is approximated has L-2-bounded mixed derivatives of a sufficiently high order. We show that the solution of Poisson's equation on the n-dimensional hypercube with Dirichlet boundary conditions and smooth right-hand side generally does not satisfy this condition. As suggested by P.-A. Nitsche in [Constr. Approx., 21 (2005), pp. 63-81], the regularity conditions can be relaxed to corresponding ones in weighted L-2 spaces when the sparse-grid approach is combined with local refinement of the set of one-dimensional wavelet indices towards the end points. In this paper, we prove that for general smooth right-hand sides, the solution of Poisson's problem satisfies these relaxed regularity conditions in any space dimension. Furthermore, since we remove log-factors from the energy-error estimates from Nitsche's work, we show that in any space dimension, locally refined sparse-grid approximation yields the optimal, dimension-independent convergence rate.
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| Document type | Article |
| Language | English |
| Published at | https://doi.org/10.1137/090764694 |
| Downloads |
Dauge_Stevenson_SiamJMathAnal_2010.pdf
(Final published version)
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