This work proposes and analyzes a compressed sensing approach to polynomial
approximation of complex-valued functions in high dimensions. Of particular
interest is the setting where the target function is smooth, characterized by a
rapidly decaying orthonormal expansion, whose most important terms are captured
by a lower (or downward closed) set. By exploiting this fact, we present an
innovative weighted ℓ1 minimization procedure with a precise choice of
weights, and a new iterative hard thresholding method, for imposing the
downward closed preference. Theoretical results reveal that our computational
approaches possess a provably reduced sample complexity compared to existing
compressed sensing techniques presented in the literature. In addition, the
recovery of the corresponding best approximation using these methods is
established through an improved bound for the restricted isometry property. Our
analysis represents an extension of the approach for Hadamard matrices in [5]
to the general case of continuous bounded orthonormal systems, quantifies the
dependence of sample complexity on the successful recovery probability, and
provides an estimate on the number of measurements with explicit constants.
Numerical examples are provided to support the theoretical results and
demonstrate the computational efficiency of the novel weighted ℓ1
minimization strategy.Comment: 33 pages, 3 figure