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arxiv: 1206.5524 · v1 · pith:I5YPBBJMnew · submitted 2012-06-24 · 🧮 math.NA · cs.NA

Contraction and optimality properties of adaptive Legendre-Galerkin methods: the 1-dimensional case

classification 🧮 math.NA cs.NA
keywords methodsadaptiveapproximationoptimalitydecayerrorfirstlegendre-galerkin
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As a first step towards a mathematically rigorous understanding of adaptive spectral/$hp$ discretizations of elliptic boundary-value problems, we study the performance of adaptive Legendre-Galerkin methods in one space dimension. These methods offer unlimited approximation power only restricted by solution and data regularity. Our investigation is inspired by a similar study that we recently carried out for Fourier-Galerkin methods in a periodic box. We first consider an "ideal" algorithm, which we prove to be convergent at a fixed rate. Next we enhance its performance, consistently with the expected fast error decay of high-order methods, by activating a larger set of degrees of freedom at each iteration. We guarantee optimality (in the non-linear approximation sense) by incorporating a coarsening step. Optimality is measured in terms of certain sparsity classes of the Gevrey type, which describe a (sub-)exponential decay of the best approximation error.

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