Unconditional bases are optimal bases for data compression and for statistical estimation

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Abstract

An orthogonal basis of L2 which is also an unconditional basis of a functional space ℱ is an optimal basis for compressing, estimating, and recovering functions in ℱ. Simple thresholding operations, applied in the unconditional basis, work essentially better for compressing, estimating, and recovering than they do in any other orthogonal basis. In fact, simple thresholding in an unconditional basis works essentially better for recovery and estimation than other methods, period. (Performance is measured in an asymptotic minimax sense.) As an application, we formalize and prove Mallat′s Heuristic, which says that wavelet bases are optimal for representing functions containing singularities, when there may be an arbitrary number of singularities, arbitrarily distributed. © 1993 Academic Press Inc.

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APA

Donoho, D. L. (1993). Unconditional bases are optimal bases for data compression and for statistical estimation. Applied and Computational Harmonic Analysis, 1(1), 100–115. https://doi.org/10.1006/acha.1993.1008

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