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arxiv: 1702.03335 · v2 · pith:JSHD3IRGnew · submitted 2017-02-10 · 🧮 math.PR

The n-term Approximation of Periodic Generalized L\'evy Processes

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keywords processesgeneralizedwhiteapproximationcompressibilitynoisesperiodicbasis
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In this paper, we study the compressibility of random processes and fields, called generalized L\'evy processes, that are solutions of stochastic differential equations driven by $d$-dimensional periodic L\'evy white noises. Our results are based on the estimation of the Besov regularity of L\'evy white noises and generalized L\'evy processes. We show in particular that non-Gaussian generalized L\'evy processes are more compressible in a wavelet basis than the corresponding Gaussian processes, in the sense that their $n$-term approximation error decays faster. We quantify this compressibility in terms of the Blumenthal-Getoor index of the underlying L\'evy white noise.

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