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arxiv: 1805.10736 · v1 · pith:4ETORRNEnew · submitted 2018-05-28 · 🧮 math.ST · math.NA· stat.TH

De-noising by thresholding operator adapted wavelets

classification 🧮 math.ST math.NAstat.TH
keywords operatorzetaadaptedcoefficientscomplexityconstantfunctionmethod
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Donoho and Johnstone proposed a method from reconstructing an unknown smooth function $u$ from noisy data $u+\zeta$ by translating the empirical wavelet coefficients of $u+\zeta$ towards zero. We consider the situation where the prior information on the unknown function $u$ may not be the regularity of $u$ but that of $ \L u$ where $\L$ is a linear operator (such as a PDE or a graph Laplacian). We show that the approximation of $u$ obtained by thresholding the gamblet (operator adapted wavelet) coefficients of $u+\zeta$ is near minimax optimal (up to a multiplicative constant), and with high probability, its energy norm (defined by the operator) is bounded by that of $u$ up to a constant depending on the amplitude of the noise. Since gamblets can be computed in $\mathcal{O}(N \operatorname{polylog} N)$ complexity and are localized both in space and eigenspace, the proposed method is of near-linear complexity and generalizable to non-homogeneous noise.

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