Adaptive Quarklet Tree Approximation

01/10/2023
by   Stephan Dahlke, et al.
0

This paper is concerned with near-optimal approximation of a given function f ∈ L_2([0,1]) with elements of a polynomially enriched wavelet frame, a so-called quarklet frame. Inspired by hp-approximation techniques of Binev, we use the underlying tree structure of the frame elements to derive an adaptive algorithm that, under standard assumptions concerning the local errors, can be used to create approximations with an error close to the best tree approximation error for a given cardinality. We support our findings by numerical experiments demonstrating that this approach can be used to achieve inverse-exponential convergence rates.

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