Article ID Journal Published Year Pages File Type
4604926 Applied and Computational Harmonic Analysis 2016 36 Pages PDF
Abstract

In this paper, we suggest approximate algorithms for the reconstruction of sparse high-dimensional trigonometric polynomials, where the support in frequency domain is unknown. Based on ideas of constructing rank-1 lattices component-by-component, we adaptively construct the index set of frequencies belonging to the non-zero Fourier coefficients in a dimension incremental way. When we restrict the search space in frequency domain to a full grid [−N,N]d∩Zd[−N,N]d∩Zd of refinement N∈NN∈N and assume that the cardinality of the support of the trigonometric polynomial in frequency domain is bounded by the sparsity s∈Ns∈N, our method requires O(ds2N) samples and O(ds3+ds2Nlog⁡(sN)) arithmetic operations in the case N≲s≲Nd. Moreover, we discuss possibilities to reduce the number of samples and arithmetic operations by applying methods from compressed sensing and a version of Prony's method. For the latter, the number of samples is reduced to O(ds+dN) and the number of arithmetic operations is O(ds3). Various numerical examples demonstrate the efficiency of the suggested method.

Related Topics
Physical Sciences and Engineering Mathematics Analysis
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